A DIAGNOSTIC INVESTIGATION AND A CORRECTIVE MODEL FOR ... · A DIAGNOSTIC INVESTIGATION AND A...
Transcript of A DIAGNOSTIC INVESTIGATION AND A CORRECTIVE MODEL FOR ... · A DIAGNOSTIC INVESTIGATION AND A...
88
A DIAGNOSTIC INVESTIGATION AND A CORRECTIVE MODEL
FOR IMPLEMENTING CHANGE IN RESPONSE TO INNOVATION
A Dissertation
presented to the Faculty of the Graduate School
University of Missouri-Columbia
In Partial Fulfillment
of the Requirements of the Degree
Doctor of Philosophy
by
HUMBERTO R. ALVAREZ A.
Dr. Thomas J. Crowe, Dr. José L. Zayas-Castro
Dissertation Supervisors
DECEMBER 2002
89
ACKNOWLEGMENTS
First, I would like to thank God for giving me the inspiration and guidance to
accomplish the goal of successfully ending the doctoral program in Industrial
Engineering at the University of Missouri – Columbia. I want to thank my wife Mady and
my daughters Deyanira and Madi for always supporting me and for their patience during
all these years. To my family and friends in Panama and Columbia, also thanks.
In addition, I would like to thank all the people from the Universidad Tecnológica
de Panamá and the Laspau-Fulbright Program, who gave me the opportunity of coming.
To Dr. José Luis Zayas-Castro and Dr. Thomas J. Crowe, my eternal gratitude. As
advisors they were always there to help and guide me. As friends their advice was
always timely and valuable. My deepest gratitude goes also to Dr. Cerry Klein, Dr.
Wooseung Jang and Dr. Thomas Dougherty, committee members, for their time, advice
and motivation.
To the management and personnel at the Missouri Lottery, thanks for allowing me
to conduct this research effort in their organization. I want to give special thanks to Mr.
Terry Skinner for all his help during this project.
My deepest gratitude to Mrs. Nancy Burke for helping me in the editing of this
document. In addition, I would like to thank Dr. Steven J. Osterlind, Professor of
Education and Counseling Psychology at the University of Missouri – Columbia and Dr.
Noel Artiles from the University of Puerto Rico – Recinto de Mayagüez for their sound
advice in the statistical analyses of this research.
90
A special thanks to the professors and staff at IMSE, Dr. Chang, Dr. Occeña, Dr.
Noble, Dr. Wu, Dr. Miller, Dr. David and Mrs. Sally Schwartz for all their support and
advice. Last but not least, thanks to our team members Annette Desarden-Carrero and
Sushma Kalavagunta, who really helped us in the last lap of this journey.
91
A DIAGNOSTIC INVESTIGATION AND A CORRECTIVE MODEL
FOR IMPLEMENTING CHANGE IN RESPONSE TO INNOVATION
Humberto R. Alvarez A.
Thomas J. Crowe, José L. Zayas-Castro
Dissertation Supervisors
ABSTRACT
Organizational change can be described as a series of activities oriented towards
modifying behaviors and structures within the organization. These series of activities are
interconnected internally and externally and are affected by human, operational and
environmental factors that dynamically influence decisions and processes in the
organization. There has been a significant amount of work in organizational change,
using both behavioral and systemic approaches. Moreover it has been argued that
research in change processes should include also the dynamic relationship between
change processes and outcomes to detect how organizational change context, processes
and the pace of change affect performance outcomes. Despite the amount of research,
there is a need for more profound studies exploring the contexts, content, and processes
involved in a change initiative.
This research proposes a model to help organizations implement change
initiatives with an increased likelihood of success. The Influence Model for
Organizational Change – IMOC - was developed with the hope of better demonstrating
the dynamics that take place in the organization by using a systems engineering view. As
an exercise to verify the relationships that govern IMOC a systems dynamic simulation
model was partially developed. The dynamic simulation confirmed the impact of
92
variables such as employees’ and management participation, environment and delay in
implementing policies on the level of resistance to change existing in the organization.
The model proposes the need of an initial diagnosis, performance measures and feedback
and control activities as main elements in the success of change initiatives. Finally, the
research proposes a multidisciplinary meta-analysis as a tool to extend and generalize
IMOC to different organizational settings
93
TABLE OF CONTENTS
AKNOWLEDGMENTS…………………………………………………………... ii
ABSTRACT………………………………………………………………………. iv
LIST OF TABLES………………………………………………………………... x
LIST OF ILLUSTRATIONS……………………………………………………... xiii
Chapter
1. INTRODUCTION..…………………………………………………………… 1
1.1 Foreword…………………………………………………………………... 1
1.2 Background and Motivation………………………………………………. 1
1.3 Organization of this document…………………………………………….. 6
2. LITERATURE REVIEW……………………………………………………... 9
2.1 Introduction………………………………………………………………... 9
2.2 A taxonomy of change…………………………………………………….. 15
2.3 Implementing Radical Change.…………………………………………… 17
2.3.1 Business Process Reengineering……………………………………. 19
2.3.2 Relationship of BPR with Other Techniques………….……………. 23
2.3.3 Factors Determining a Successful Radical Change Initiative………. 30
2.4 Organizational Change and Modeling Methodologies…………………….. 46
2.4.1 The Organization as a Complex System……………………..……... 46
2.4.2 Fundamental Concepts of Systems Modeling……………………… 52
2.4.3 Modeling Methodologies…………………………………………… 57
2.4.3.1 Influence Diagrams……………………………………….. 59
94
2.4.3.2 Petri Nets………………………………………………….. 62
2.4.3.3 System Dynamics…………………………………………. 65
2.5 Enterprise Modeling……………………………………………………….. 72
2.6 Modeling Organizational Change..………………………………………... 75
2.7 Problem Statement and Objectives……………………………………….. 81
2.8 Scope of the study…………………………………………………………. 83
3. METHODOLOGY……………………………………………………………... 88
3.1 Introduction………………………………………………………………... 88
3.2 The Rationale of the Case Study.………………………………………….. 91
3.2.1 The Qualitative Research Paradigm……………………..………….. 91
3.2.2 The Case Study…..…………………………………………………. 93
3.2.2.1 The Design of a Case Study………………………………. 94
3.2.2.2 Judging the Validity of a Case Study……….……………. 94
3.3 Case Study Elements..……………………………………………………. 99
3.3.1 Study Questions…..………………………………………………... 99
3.3.2 Study Propositions..………………………………………………... 101
3.3.3 Unit of Study.…….………………………………………………… 106
3.3.4 Data Collection…………………………………………………….. 109
3.3.5 Data Analysis………………………………………………………. 112
3.4 Construction of the Model………………………………………………... 117
3.5 Validation of the Model…………………………………………………… 118
95
4. RESULTS AND DISCUSSION……………………………………..………… 124
4.1 Introduction………………………………………………………………... 124
4.2 Internal Validity and Reliability of the Survey……………………………. 124
4.2.1 Internal Validity…………………………………………………….. 125
4.2.2 Internal Reliability………………………………………………….. 130
4.3 Analysis of the Study Population…………………………………………. 130
4.4 Analysis and Verification of the Study Propositions……………………... 139
4.5 Discussion………………………………………………………………… 162
5. THE INFLUENCE MODEL FOR ORGANIZATIONAL CHANGE………… 170
5.1 Introduction……………………………………………………………….. 170
5.2 Representation of Change………………………………………………… 170
5.3 Characteristics of the Influence Model for Organizational Change……… 179
5.4 The Semantic Model: The Global View of the Model…………………… 185
5.5 The Causal Model. A Global Control View of the Change Process……… 190
5.6 The Simulation Model. A Detail View of the Change Process…………… 210
5.6.1 Components of the Simulation Model………………………………. 214
5.7 Simulating Organizational Change……………………………………….. 218
5.7.1 The First Scenario: The Base Model……………………………….. 221
5.7.2 The Second and Third Scenarios: Introduction of Innovation and
Change Forces……………………………………………………….
222
96
5.7.3 The Fourth and Fifth Scenarios: Introducing Delays in Actions……. 224
5.7.4 The Sixth Scenario: The Effect of Existing Need of Change……….. 227
5.8 Validation and Generalization of IMOC………………………………….. 229
5.8.1 Validation of IMOC………………………………………………… 229
5.8.2 Generalization of IMOC…………………………………………….. 233
6. CONCLUSIONS AND FUTURE RESEARCH……………………………….. 238
6.1 Introduction……………………………………………………………….. 238
6.2 Summary of Results……………………………………………………… 239
6.3 Contribution of this Research Effort……………………………………… 243
6.4 Future Research…………………………………………………………… 244
APPENDIX
1. DIAGNOSTIC INSTRUMENT………………………………………………... 247
2.: INTERVIEW PROTOCOL……………………………………………….…… 277
REFERENCES……………………………………………………………………. 283
VITA………………………………………………………………………………. 305
LIST OF TABLES
Table Page
2.1 Taxonomy of innovations…………………………………………………. 17
2.2 Critical success factors to achieve critical change………………………… 33
2.3 Transformational variables………………………………………………… 44
2.4 Transactional variables…………………………………………………….. 45
3.1 Sources of evidence for a case study………………………………………. 96
97
3.2 Classification of items by dimension measured…………………………… 113
4.1 Responses by region……………………………………………………….. 132
4.2 Responses by division……………………………………………………... 133
4.3 Frequency table: Years at the Agency and at current position……………. 134
4.4 Frequency table: Years at the Agency by division………………………... 135
4.5 Basic statistics: Years working and tenure time in years at the state and at
the Agency by division…………………………………………………….
136
4.6 Participants by supervisory level………………………………………….. 137
4.7 Paired t-test for Transformational Variables Today vs. A year ago………. 140
4.8 Paired t-test for Transformational Variables Preferred vs. Today………… 140
4.9 Paired t-test for Transactional Variables Today vs. A year ago…………… 141
4.10 Paired t-test for Transactional Variables Preferred vs. Today…………….. 141
4.11 Perception of span, goals and results for the different projects……………. 144
4.12 Perceived extent for different environmental and institutional elements
over the decision for change………………………………………………..
145
4.13 Perceived success scores by perceived success and project goal………….. 146
4.14 Correlations between perceived results, goals and type of projects……….. 147
4.15 Frequency table: Project extent by goal…………………………………… 149
4.16 Two-way ANOVA: Project goal by project extent……………………….. 149
4.17 Correlations between extent of projects and perception of environmental
and institutional factors as today…………………………………………..
151
4.18 Summary of the most significant relationships (p 0.5)………………….. 151
4.19 t-test for perception of change on environmental and institutional
98
elements: Preferred vs. Today……………………………………………... 152
4.20 t-test for the difference between transformational and transactional
variables and preferred scenarios…………………………………………..
153
4.21 Pearson’s correlation between change in variables and goals and type of
projects……………………………………………………………………..
155
4.22 Pearson’s correlation between amount of people supervised and other
variables……………………………………………………………………
157
4.23 Regression model: Results vs. hierarchical level and change in
transformational and transactional variables………………………………
157
4.24 ANOVA of change in transformational variables – Today vs. Year ago –
by different demographic characteristics…………………………………..
159
4.25 Pearson’s correlation between change in transformational and
transactional variables and tenure time…………………………………….
161
4.26 Summary table: Propositions validation…………………………………… 164
5.1 Critical success variables classified by dimension of change……………... 174
5.2 Variable definitions: Semantic Model…………………………………….. 187
5.3 Variable definitions: Causal Model………………………………………... 191
5.4 Variable definitions and potential measures………………………………. 219
5.5 Empirical cumulative probability distributions……………………………. 220
5.6 Equations for the simulation model……………………………………….. 221
6.1 Summary table: Proposition validation……………………………………. 240
99
LIST OF ILLUSTRATIONS
Figure Page
1.1 The integrated research approach…………………………………………. 5
2.1 Difference in outcomes depending on the approach to organizational
change used………………………………………………………………..
26
2.2 Cross-functional activities within a traditional organization……………... 34
2.3 Graphical representation of a system……………………………………... 47
2.4 Functional view of the organization………………………………………. 49
2.5 The organization from a systems thinking approach……………………… 49
2.6 Interpretation of influences……………………………………………….. 60
2.7 Interpretation of the arcs………………………………………………….. 61
2.8 Graphical representation of a Petri net……………………………………. 64
2.9 An example of a causal loop diagram. Influential factors in
performance……………………………………………………………….
67
2.10 Definitions and examples of link polarity………………………………... 68
2.11 Stock and flow diagramming notation……………………………………. 69
2.12 A population model showing the different elements of a system dynamics
model………………………………………………………………………
70
2.13 An extended enterprise model with the different views embedded………. 74
2.14 The process and content of organizational change……………………….. 77
2.15 A conceptual view of the organizational change process…………………. 79
2.16 The scope of the research…………………………………………………. 85
100
3.1 The integrated research approach…………………………………………. 89
3.2 The role of the case study as a research methodology……………………. 90
3.3 Verification process……………………………………………………….. 114
3.4 The Compram methodology applied to the model construction………….. 119
3.5 A logical formal procedure for dynamic systems models validation……... 123
4.1 Scree plot of the variables under analysis…………………………………. 126
4.2 Loading factor for the different variables under study……………………. 127
4.3 Interrelationships among the critical variables of the Burke and Litwin
model……………………………………………………………………...
129
4.4 Participants by region…………………………………………………….. 132
4.5 Participants by division…………………………………………………… 133
4.6 Participants by years at the Agency………………………………………. 134
4.7 Years at current position………………………………………………….. 134
4.8 Supervisory level of participants by division…………………………….. 137
4.9 Respondents by role in the different projects…………………………….. 138
4.10 Participants by stage of the projects……………………………………… 138
4.11 Global perception of the extent of the projects…………………………… 145
4.12 Plot diagram of Change in Transformational vs. Change in Transactional
Variables – Today vs. Preferred scenarios………………………………...
154
4.13 Scattered plots of change in transformational variables vs. demographics
characteristics………………………………………………………………
160
4.14 Scattered plots: change in transactional and transformational variables vs.
tenure time…………………………………………………………………
161
101
5.1 Change as a multidimensional process…………………………………… 171
5.2 Closed-loop representation of the organizational change process………… 175
5.3 Organizational change as a stochastic process……………………………. 176
5.4 Critical elements in organizational change………………………………... 178
5.5 The Influence Model for Organizational Change. A causal loop
representation of the global view………………………………………….
186
5.6 Causal relationships for Change in Performance Measures………………. 189
5.7 The Influence Model for Organizational Change. A global control view… 190
5.8 Cause trees: Change in transformational and transactional variables…….. 194
5.9 Causal relationships for proposition 1…………………………………….. 195
5.10 Cause tree for resistance to change……………………………………….. 197
5.11 Causal relationships for propositions 2, 3, and 4………………………….. 199
5.12 Cause tree for innovation and change forces……………………………… 200
5.13 Causal relationships for propositions 5 and 6……………………………... 201
5.14 Causal relationships for propositions 7, 8 and 9…………………………... 203
5.15 Cause tree for employees’ perceptions and expectations…………………. 204
5.16 Cause tree for management’s perceptions and expectations……………… 204
5.17 Innovation and change forces as a function of perceptions and
expectations………………………………………………………………..
205
5.18 Causal relationships for propositions 10 and 11…………………………... 207
5.19 Cause trees for organizational outcomes………………………………….. 207
5.20 Integrated view of IMOC………………………………………………….. 209
5.21 A typical dynamic system…………………………………………………. 211
102
5.22 Stock and flows……………………………………………………………. 212
5.23 Adjusting behaviors of positive and negative feedback loops…………….. 214
5.24 Causal relationships for propositions 1 and 7, 8 and 9……………………. 215
5.25 Organizational outcomes as function of innovation and change forces,
need for change and perceptions and expectations………………………...
215
5.26 Effect of resistance to change on change outcomes………………………. 216
5.27 Integrated dynamic model………………………………………………… 217
5.28 Behavior for Need for Change through time……………………………… 222
5.29 Need for change if internal forces are included…………………………… 223
5.30 Need for change when all the innovation and change forces are
incorporated………………………………………………………………..
224
5.31 Effect of delays in policies regarding the process of change……………… 225
5.32 Increasing trend of need change when delays are present………………… 225
5.33 Corrective actions by increasing the effect of employees on the model….. 226
5.34 Effect of feedback on the accumulated need for change………………….. 227
5.35 Correcting effect of empowerment and management…………………….. 228
5.36 IMOC validation meta-analysis 235
103
104
Chapter 1
Introduction
1.1 Foreword
The well-known author and futurist Alvin Toffler wrote, “If we don’t learn from
history, we shall be compelled to relive it. True. But if we do not change the future, we
shall be compelled to endure it. And it could be worse (Toffler, 1972, p. 3).”
Organizations have been coping with change since the Industrial Revolution, when they
had to develop from the traditional artisanal methods of production, to a more
enterprising approach in order to meet expanding demands for mass market products and
services (Toffler, 1979, Hammer and Champy, 1993).
For an organization to develop, change must occur (Burke, 1994). This change
implies that owners, managers and the public must eliminate their traditional approaches
to organizing and conducting business and create new approaches and concepts (Hammer
and Champy, 1993). When the need of change is recognized, two questions have to be
addressed: what changes are necessary, and how these changes will affect the
organization. Answering these questions becomes crucial for the success of any change
initiative (Heller, 2000).
1.2 Background and Motivation
Conducting an 18-month reengineering project at the Missouri Lottery, a group of
researchers from the University of Missouri found that the Missouri Lottery initiated in
105
fiscal year 1998 a program called “Because You Are Important” (BYAI). It aimed to
improve service quality and to develop a new culture in the organization fostering the
idea “that innovation in all areas of our business is a means of gaining and maintaining
leadership “(“Because You Are Important”, 1998, p, 7). Cultural changes promoted by
this program should have facilitated creativity and innovation. A reengineering process
followed this program to improve certain business practices critical to making the
Missouri Lottery an efficient and competitive organization.
The reengineering process began with the ideas presented by the executive
director about current performance – at that time -, and the need for change in order to
make the organization more flexible and adaptive to new markets. The process included a
series of interviews with top managers, mid-level managers and other employees with the
purpose of finding the main processes needing change. The group in charge of the project
presented five main proposals for change, which involved the creation of new working
units requiring the development of cross-functional activities, responsibilities and
authority. From the proposed new units, one was immediately adopted, resulting in
savings in time, paperwork and resources for both the Lottery and retailers. This project
was awarded the Governor’s Productivity Award in 1999. Of the other four proposals,
only a small portion of the procurement process was accepted.
The experience obtained in this project indicated that while the Missouri Lottery
adopted some improvement processes, others were rejected. Usually small incremental
changes were accepted, although not easily, while other proposals that were concerned
more with managerial decision making or with managerial control were frequently
rejected. Organizations, like systems, tend to reach equilibrium even within their
106
dynamic behavior. Inertia makes systems maintain their initial conditions even if some
of the components of the system have been through a small modification (Kelly, and
Amburgey 1991, Amburgey, et al, 1993, Kiel, 1994, Anderson, 1999, Gharajedachi,
1999, Pascale, et al., 2000). Is this the reason why only small changes were allowed in
the Missouri Lottery?
From these experiences it is possible to ask why, if people supposedly were
culturally prepared to adopt new views, the project did not have the expected results. Is
there a missing link between organizational learning, organizational change and
innovation that makes it difficult, if not impossible, to implement new processes? Are
individuals the cause of this failure, or is it the organizational structure?
As was demonstrated in the work at the Missouri Lottery, the strategies used to
redesign business activities involve a link between engineering and organizational
development (OD). This link enhances the opportunities for success (Moosbruker and
Loftin, 1998). While OD is a long-range effort to improve an organization’s renewal
process (Chmiel, 2000), Business Process Reengineering uses engineering tools, such as
process modeling and information technology to create the necessary synergy to generate
radical change (Presley, et al 2000). Improvements resulting from this combined effort
will generate more benefits for the state and consequently for the public.
The objective of this research is to propose a conceptual model called the
Influence Model for Organizational Change (IMOC). This model integrates knowledge
on organizational change presented in the literature with concepts from systems dynamics
and management and decision sciences into a more detailed conceptual model that can
explain the intricacies of adopting change and innovation in organizations using a
107
systems thinking approach. IMOC explains not only factors that are potential obstacles
to change and innovation, but also helps in developing guidelines that can be applied to
enhance the chance of succeeding in implementing change and innovation. A case study
conducted to investigate with more detail the experiences obtained at the Missouri
Lottery is intended to obtain relevant information to determine whether the propositions
presented in this research effort are valid, and what information is needed in the future to
better address the critical issues.
After 18 months of research and reengineering work at the Missouri Lottery, a
solid base to continue a more extensive and profound study exists. Momentum has built
up for more research into the expansion of the empirical and theoretical validation of
concepts, models, and characteristics of organizational change. This is a unique
opportunity to integrate concepts from organizational development, management sciences
and engineering to systematically describe, understand and explain the intervening
variables and potential relationships existing during a complex change initiative.
The use of integrated and multidisciplinary knowledge is a key element of this
research. Figure 1.1 graphically conceptualizes the research process. Knowledge from
behavioral and social sciences helps to set the necessary theoretical background for
IMOC. Through these concepts the model relationships and study proposition were
generated. Engineering and decision science concepts helped to adopt the necessary
methodology for modeling a complex activity such as organizational change. Systems
thinking theory integrates the concepts from social sciences and modeling techniques in a
unique set of relationships and sub models that conceptualize change in a holistic
108
approach, showing the effect of the different variables and elements on the likelihood of a
successful change initiative.
As seen in figure 1.1, the information presented in the literature review, together
with the personal experiences obtained by the researcher in a previous project at the
Missouri Lottery are the basis that motivated this research effort. At the same time, the
literature review served as a guide for the theoretical background needed to understand
the complexity of change. In addition, the information presented in this review helped to
incorporate the different relationships and causalities posited in IMOC; it allowed the
generation of the study propositions. Finally, the information helped in the decision of
which modeling methodology was the most appropriate to present the integration of the
different causal relationships that exist during a complex change process in a holistic
approach.
IMOC
Literature Review
Ÿ Social and behavioral
sciences
Ÿ Systems Thinking
Ÿ Engineering and
Management Sciences
Case Study
Ÿ Surveys
Ÿ Interviews
Ÿ Archival data
Ÿ Observation
Propositions
Problem
Statement and
Objectives
Theory and conceptual
informationData gathering and organizational
diagnosis
Information from the
case study will help to
develop relationships in
the IMOC
Information from the case study will
help to confirm the propositions
Literature review will
help to develop the
study proposition
Previous
experience
Motivation
Literature review
helps to determine
main relationships in
IMOC
The Motivation of this
research effort is the first
step for defining the
problem and objectives
Both previous experiences
and the findings in the
literature are the
motivators of this
research effort
The literature review
allows the construction of
the problem statement and
the definition of research
objectives
Fig. 1.1 The integrated research approach
109
Through the case study, as qualitative methodology, the empirical information needed to
integrate the knowledge from the literature with the conceptual relationships presented as
propositions in this research effort was gathered. Linking the experiences obtained
during this case study with the literature assisted in extending the ideas and propositions
generated in this research to other organizations, conceptualizing a model that could be
used to describe, control and successfully implement organizational change both in
government and private organizations.
1.3 Organization of this Document
The organization of this document is intended to facilitate the understanding of
the goals and objectives of this research initiative, as well as the tasks performed and the
instruments used to test the propositions that will be presented in later sections of this
document.
Chapter Two presents a selected literature review on Organizational Change,
including theory and models presented by different authors. It includes a section on
Business Process Reengineering (BPR) as the best-known strategy to implement radical
change and compares it with other strategies for organizational change such as
Organization Development, Total Quality Management and Change Management. In
addition, this chapter includes information on systems thinking and system
methodologies, and briefly presents concepts on different tools to model organizational
change. Finally, this section presents the problem statement and objectives of this
research effort.
110
Chapter Three describes the methodology proposed to achieve the goals of this
initiative. A section explaining and justifying the use of the case study as research
methodology is included. The chapter explains the methodology and activities that are to
be performed to accomplish the goals defined in Chapter Two. The data collection, data
recording procedures, instruments, verification and validation procedures and specific
aspects of the project will be described and explained, including a description of the
proposed instruments used to gather the necessary information.
In addition, Chapter Three includes information on the use of an integrated
approach for analyzing and solving complex social problems. This approach, called
Compram (DeTombe, 2001), indicates the necessary meta-steps that a multidisciplinary
team should follow to define, to describe and to solve complex problems using a
prescriptive framework as a basic communication tool between researchers with different
backgrounds to understand not only the problem but in addition, the different facets and
characteristics of the possible solutions. Finally a section on validation of system
dynamics models is presented. One of the major criticisms of dynamic systems models is
of the validation and reliability. This section intends to present the philosophical
concepts and procedures for validating a system dynamics model, and relates these
procedures with the actual scope of this research initiative.
Chapter Four of this document presents an analysis of the information gathered
through the surveys and interviews conducted at MoLo, and compares the information
with the different propositions stated in Chapter Three.
Chapter Five introduces the proposed model and explicates different expressions,
in terms of systems dynamics concepts, intended to state the causal relationships existing
111
in the organizational change process. IMOC models organizational change from different
perspectives and dimensions, exploding the relationships in different sub-models trying
to better explain the dynamicity of change.
Finally, a set of conclusions and ideas for future work are presented in Chapter
Six. The ideas and proposed interrelated work were intuitively developed as part of the
findings, commonalities and contradictions discovered during the case study and the
literature review.
112
Chapter 2
Literature Review
2.1 Introduction
Intense global competition together with all the complexity involved in a world of
constant changes makes organizations extend outside their traditional boundaries to
conduct business (McCormack and Johnson, 2001). The challenge today is to design
organizations that are flexible and adaptive, making them able to survive in time of
change and globalization (Burke and Trahant, 2000). In the last 30 years many tools for
attacking this challenge have been developed; however many of the conventional
managerial practices seem to be outdated and need to be dynamically changed, since the
concept of managing business in a stable environment is no longer valid (Elion, 1993). In
most cases management practices do not bring significant changes in behavior and
practices. Organizations need to stop doing things they have being doing traditionally if
they expect to get different results (McNanus, 2002).
Coping with rapid change has been a great challenge and concern for most
organizations. Organizational change ranges from a fairly simple project to a complex
company transformation (Harrison, 1994), and becomes critical and inevitable due to the
unstable nature of the competitive environment (Spector, 1989). This change has the
objective to create meaningful competitive differentiation among organizations, which
requires a redesign of products, services and processes (Kim, 2000). Changes in the
organization have the immediate effect of the actions and agitations that follow any new
activity, and a full effect after the organization has adjusted itself to the new situations
113
created (DeCanio, et al, 2000). Immediate results of a change initiative cannot be
expressed in terms of change in routine activities and policies. Instead, more profound
changes require the adoption of new structures, culture, leadership and attitudes (O’Hara,
et al., 1999, Presley, et al., 2000). As organizations try to keep up with these changes and
new environments, they grow in complexity. Organizational complexity can arise from:
enterprise stress, diversification, efforts to eliminate waste, pressure from competition,
government regulation and deregulation and new technologies, among other factors
(Scofield, 1996), and influences the manner in which decisions are made, actions taken
and results measured (DeCanio, et al., 2000)
Organizations that have learned to view change as a permanent process are
successful in maintaining their competitiveness and surviving in the changing world
(Armenakis and Bedeian, 1999). Organizations that fail to keep up with these changes
are more likely to disappear in the near future (Hosking and Anderson, 1992). The idea of
continual change and renewal is always present for both theorist and practitioner. This is
especially true for those who are operating in environments that are either innovative or
subject to forces created by competition or economic and governmental-rules changes
(Shareef, 1997). Although a consensus as to what constitutes an organizational
transformation has not been fully reached (Poole, 1998), organizational change can be
defined as an “empirical observation of difference in form, quality, or state over time in
an organizational entity” (Van de Ven and Poole in Hurley, 1998, p. 57). In order to
implement change in response to external and internal motivations it is necessary to
understand how organizations change; how they learn from experiences; how they design
114
or redesign structures, strategies, and organizational structures; and how they plan for and
integrate new technologies.
Actions typically associated with transformation include changes to
organizational strategies, personnel changes, new organizational missions, visions,
objectives, policies, and culture. Top management has to consider the existing set of
organization guidelines and structures before trying to transform the organization (Poole,
1998). In addition, it is important to consider that the outcomes of the organizational
change process influence other organizations that interact with the transforming
institution (Bloodgood and Morrow, 2000). Among these outcomes are the number of
organizations that are changing, the direction of change, and how clear it is whether or
not certain strategies are succeeding.
McAfee and Champagne, (1987) define organizational change as “any deliberate
attempt to modify the functioning of the total organization, or one of its major
components, in order to improve effectiveness (p. 451).” It is important to distinguish
two important elements in this definition. First of all it is deliberate. In other words, it is
necessary to plan the change process before attempting it. To minimize the risk of
failure, it is important to develop a coherent plan that justifies and leads the change
process since lack of planning leads to improvisation, which then leads to failure
(McAfee and Champagne, 1987). The other important element to consider in this
definition is the concept of the total organization as the recipient of the change process.
Considering the organization as a whole implies viewing the organization as a set of
interrelated elements and variables all of them oriented towards the same purpose
(Gharajedaghi, 1999).
115
Innovation, on the other hand, will be viewed as the adoption of technologies,
administrative systems, ideas or procedures that will modify everyday transactions
(Edwards, 2000, Gopalakrishman and Damanpour, 2000). Organizations would adapt
products, services, devices, systems, procedures or programs that are not necessarily new
to other organizations but are new to the adopting entity (Nord and Tucker, 1987). It is
possible to argue then that while organizational change implies the adoption of
innovations, the adoption of a new system or technology implies the adaptation of the
organization to a new element, but not necessarily the generation of organizational
change.
The necessity of change is not only a requirement for private organizations.
Effective public administration in the era of innovation requires that government agencies
develop the capacity to use innovative management tools and techniques (Poister and
Streib, 1999). These techniques should be designed to change how government does
business with emphasis on the measurement of results (Wechsler and Clary, 2000). The
state and federal comprehensive reforms during the 1990s are part of the Government
Performance and Result Act (GPRA) implemented nationwide in 1997 as a result of the
document “ A Vision of Change for America”. This document describes the
comprehensive economic plan proposed by President Clinton in 1993. 1GPRA requires
agencies to develop strategic plans, annual performance plans, and annual performance
reports in order to answer the basic question: What are we getting for the money we are
spending? To be successful GPRA requires changes in management systems in addition
to strategic and performance plans (Kessler, 1998). This effort requires dramatic cultural
1 A Vision of Change for America (1993) Executive Office of the President of the United States of America.
116
changes, focusing more on results than on process. GPRA looks for efficiency in
government management to reduce federal and state deficits while improving the quality
of services to the taxpayers. To achieve this goal, it is necessary not only to develop
appropriate performance measures, but also to redefine federal government’s and states’
processes and agencies.
Applying change to government is different than applying change to private
organizations (Armenakis and Bedeian, 1999). The literature addresses change in state
government administration related to the climate of change and associated models
(Kessler, 1998), implementation of performance measures (Wechsler and Clary, 2000),
reinvention of government (Russell and Waste, 1998, and Brudney, et al. 1999), and
strategic management in public agencies (Poister and Streib, 1999).
Research on change for public agencies has been limited by the development of
two competing and seemingly incompatible perspectives, reinventing government or
refounding government (Russell and Waste, 1998). Reinventing government is based on
the concept that public administration can deliver goods and services using different
approaches. This raises the issue that state administrators have to confront the
development of entrepreneurial governments using innovative tools such as strategic
management, information technology, and performance measurement, among others
(Brudney, et al., 1999). Refounders, on the other hand, argue that individual behavior is
socially shaped because of the old social institutions, their rules, paradigms, and goals.
Therefore, problems are resolved only if institutions and individuals change (Russell and
Waste, 1998). These perspectives appear to be based on both radical changes in
117
operational processes as well as changes in the principles and practices of organizational
development and individual change.
A performance government is distinguished by its emphasis on the measurement
of results and is conceptually oriented toward results and accountability (Wechsler and
Clary, 2000). Reinventing government requires this orientation to be applied across the
states and across individual agencies (Brudney, et al., 1999). State government has to
become an organization that utilizes evaluation as an aid to gain from previous
experiences, detecting and correcting errors (Leeuw, et al., 1994).
To measure the adoption of reinvention and success of reinvention reforms,
Brudney, et al., (1999) studied 93 agencies taking into account variables that affect
change across agencies. These variables include state reform effort, agency type, agency
characteristics, environmental influences on the agency, and director’s attitude toward
change. They concluded that agencies with access to resources for investment are likely
to sustain a more efficient change process.
Thong et al. (2000), on the other hand, affirm that because state and federal
agencies rely more on appropriations and less on market exposure and provide
monopolistic and/or mandatory services, there is an increased reluctance to adopt massive
changes, less innovative breakthrough and greater cautiousness in thinking and decision
making. They add that although social and political changes are the drivers that motivate
change in public agencies, due to the greater diversity and intensity of external influences
a great resistance to change is found in state and federal organizations.
118
2.2 A Taxonomy of Change
Organizational change involves the transformation of an organization over time
(Barnett and Carroll, 1995). It can be seen from two major dimensions: the content of
change and the process of change. The content of change can be identified with the goals
and objectives of the planned change, and it can be measured by studying the
organization before and after the change process has been implemented. The second
dimension is concerned with how organizational change is achieved over time
(Damanpour, 1991, Barnett and Carroll, 1995, Damanpour, and Gopalakrishnan, 1999).
In order to define both the content and the process of change, it is important to
define the type of change that is expected. O’Hara (1999) mentions that it is possible to
identify three types of change: a first order change (alpha type) that involves only task
accomplishment, a second order change (beta type) that involves tasks and people, and a
third level change (gamma type) that involves the whole organization and requires a high
level of preparedness. Hence, the content of change can be seen in a continuum going
from routine to radical (Nord and Tucker, 1987), while the process of change also can be
seen in a continuum, ranging from continuous to radical change (Hammer and Champy,
1993, Grover, et al. 1995, Grover, 1999).
From the content dimension, it is possible to argue that the process of change can
be directly related with the adoption of an innovation since the adaptation to a new
process, technology or system is closely related to the organizational change process.
Routine innovation is defined by Nord and Tucker (1987) as “the introduction of
something that while new to the organization is very similar to something the
organization has done before (p. 11).” On the other hand radical innovation “in addition
119
to being new to the organization, is very different from what the organization has done
previously, and is therefore apt to require significant changes in the behavior of
employees and often in the structure of the organization itself (Nord and Tucker, 1987, p.
11).” According to the definition given by Nord and Tucker, it is possible to suggest that
in order to implement radical innovations it is often necessary to radically transform the
organization, or as stated by Presley, et al. (2000), to develop a gamma type change.
Radical transformation “requires radical leaps, if not fundamental changes, in the way
things are done (Burke, et al., 1996, p. 46)”.
Nord and Tucker (1987) go beyond just defining the radicalness of the innovation.
They also define innovation with respect to what parts of the organization the innovations
affect and the units involved in the adoption of the innovations. With respect to what
parts of the organization the adoption may affect, innovations can be defined as technical
and administrative. Technical innovations originate in the technical core of the
organization and pertain to the inclusion of new products, technologies or process.
Administrative innovations originate in the administrative core of the organization and
pertain to administrative procedures, policies and systems (Nord and Tucker, 1987,
Damanpour, 1991). Damanpour (1991) studied the relationship between the radicalness
of the innovation and the part of the organization affected and concluded that the
adoption of administrative innovation requires a less transformational change than the
adoption of technical innovations. According to Damanpour’s study, administrative
change requires what Burke, et al., (1996) define as transactional change, which “requires
a fine tuning and improving of the organizational existing behaviors (p. 46).” Therefore,
this type of change can be classified as both alpha and beta since it affects tasks and
120
people without profoundly changing the organization and its core elements (Presley, et al.
2000).
Finally, Nord and Tucker (1987) define central and peripheral innovation in
relation to the organizational elements affected during the change and innovation process.
affecting the core elements of the organization, central innovations are those elements
that internally transform the organization and are related to vision and mission, authority,
technologies and strategies (Kelly and Amburgey, 1991, Burke and Litwin, 1992).
Central innovations mandate a core structural change that requires a more
profound change involving internal structures and a radical divergence from current
practices and behaviors (D’Aunno, et al., 2000). Peripheral innovations affect peripheral
structures, which protect core structures from uncertainty by defining the procedures and
systems that execute the routine transactions within the organization and between the
organization and the environment (Kelly and Amburgey, 1991, Burke and Litwin, 1992).
As seen in table 2.1 routine innovations involve the adoption of new administrative
activities. These activities affect what Burke and Litwin (1992) define as transactional
variables or specific elements concerning activities or process. These types of
innovations are the result of continuous adjustments within the peripheral or daily
business activities in the organization. Radical innovations involve adapting the
Table 2.1 Taxonomy of innovations
Radicalness of
the innovation
Extent of the
innovation
Depth of the
innovation
Elements affected Type of change
Routine Administrative Peripheral Transactional
elements
Transactional or
continuous
Radical Technological Central Transformational
elements
Transformational or
radical
121
organization to what Nord and Tucker (1987) defined as technological innovation. These
innovations, as posited by Damanpour (1991), include not only new products and
services to satisfy external competition, but the new elements needed to perform the new
processes adopted. Radical innovations affect central activities defined by Burke and
Litwin (1992) as transformational elements or variables that affect core organizational
elements and beliefs. Before attempting to adopt radical innovations, the organization
needs radical change (Heller, 2000).
2.3 Implementing Radical Change
Tushman and Romanelli’s inertia theory of organizational change (in Sastry,
1997) affirms that transformational change is composed of occasional dramatic
revolutions or punctuations. These punctuations overcome organizational inertia and set
a new course for the organization to follow. In contrast Hannan and Freeman (in
Amburgey, et al., 1993) propose that resistance to change occurs because organizations
are embedded in the institutional and technical structures of their environment. They
posit that organizations exist because they are able to perform with reliability and
accountability if the organizational goals are institutionalized and activities are
routinized. Nevertheless, this institutionalization and routinization generates strong
resistance to change. Thus, the characteristics that give stability to an organization also
generate resistance to change and reduce the probability of change.
In addition, Larsen and Lomi (1999) assert that it is possible to view organizations
from two opposite points of views. On one side as organizations grow in size and age;
they accumulate competencies and knowledge that help in obtaining a competitive
122
position. On the other hand, it is possible to view the organization aging process as
directly related to the lack of ability to rapidly and adequately cope with rapid change and
innovation. Both internal and external stakeholders prefer organizations that exhibit
reliable performance because change disrupts both internal routines and external linkages
(Ettlie, 2000. But, as Dent and Goldberg (1999) affirm, if people are convinced that
change will bring better conditions and more stable conditions, there is more likelihood
that the change will be accepted. In conclusion, inertia is an important element in
defining which view is true since it has to do with the speed and cost at which the
organization can adapt and change to address new and different needs; can find and
occupy new resources and space; and can make actors to generate and retain new
resources internally (Kelly and Amburgey, 1991, Amburgey, et al., 1993, Sastry, 1997,
Larsen and Lomi, 1999).
Organizational change needs to be at a faster pace (Burke, 1994) especially if it is
precipitated by traumatic events as is common in today’s economy. With radical change
the most complex of all the types of change, it is necessary to elucidate the strategies to
successfully achieve radical change. The next section covers a more detailed analysis of
the strategies developed to implement change. The section emphasizes Business Process
Reengineering (BPR) as a strategy for radical change, and compares it with other
methodologies.
2.3.1 Business Process Reengineering (BPR)
Reengineering, as a radical change strategy, offers a formal methodology for
identifying and achieving radical performance gains (Davidson, 1999). The idea of BPR
123
is that simple improvement of processes will not eliminate complexity. Organizations
need to go back to the drawing board and consider what they have to do to be most
efficiently and effectively organized in order to achieve their goals and objectives
(Clarke, et al., 2000), including a complete redesign of the organization.
Several definitions of BPR have been found in the literature. The term “business
process redesign” originated in a research project which started at MIT in 1984 (Biazzo,
1998), and was classified as the third step of a business-restructuring model. The model
consisted of five levels defined as: localized exploitation, internal integration, business
process redesign, business network redesign, and business scope redefinition. Business
process redesign consisted of reengineering processes in order to fully exploit IT
capabilities. BPR was considered a specific strategy for using information technology
efficiently (Biazzo, 1998).
Davenport and Short (1990) defined Business Process Redesign as “the analysis
and design of work flows and processes within and between organizations” (p.11). They
added that working together with information technology (IT), these tools would have the
potential of transforming the organization to “the degree that Taylorism once did” (p.11).
In this view, it is possible to say that BPR changed from an IT specific application to a
more general strategy enabled by IT (Davenport and Short, 1990, Biazzo, 1998, Al-
Mashari and Zaiari, 2000).
Hammer and Champy (1993) affirm that:
“ To reinvent their companies, American managers must throw out their
old notions about how businesses should be organized and run…(p. 1)…
Reengineering is the fundamental rethinking and radical redesign of
business processes to achieve dramatic improvements in critical
contemporary measures of performance, such as cost, quality, service and
speed (p. 32).”
124
While Davenport and Short (1990) conceptualize the design of processes not
only within the organization, but also between organizations, Hammer and Champy
consider, in addition to business processes, the importance of performance measures as
an important element of the reengineering process. In addition, such a great impact on the
organizational change can be efficiently and effectively reached thanks to the new
generation of IT (Davenport and Short, 1990, Hammer, 1990, Hammer and Champy,
1993, Talwar 1993, Martínez, 1995).
Klein, on the other hand includes a more strategic and organizational
orientation when he defines BPR saying that:
“ BPR is the rapid and radical redesign of strategic, value-added
business processes – and the systems, policies, and organizational
structures that support them – to optimize the work flows and
productivity in an organization” (Klein, 1993, p. 40).
In the same context, Talwar (1993) defines BPR as:
“An approach to achieve radical improvements in customer services and
business efficiency. The central challenge is to rethink and streamline the
business process and support architecture through which the organization
creates and delivers value” (p. 23).
Lee (1995) compiled a series of definitions of BPR. Some of the definitions that
can be considered relevant for this work are presented below:
- E. O. Goll (in Lee, 1995) defined “BPR as the total transformation of a business; an
unconstrained reshaping of all business process, technologies and management
systems, as well as organizational structure and values, to achieve quantum leaps in
performance throughout the business” (p. 6).
125
- An anonymous definition says that BPR “is a process by which companies become
world-class competitors by remaking their information systems, their organizations,
their way of working together, and the means by which they communicate with each
other and their customers” (p. 6).
Vansina and Taillieu (1996) agree that reengineering is the redesign from a clean
slate of an existing organization by inventing a better way of doing work. They affirm
that this clean slate approach is not new, but has been part of socio-technical systems for
more than a decade. The main difference is that BPR achieves radical changes from the
perspective of the customer, while socio-technical approaches accomplish change mainly
as a function of people’s needs within the organization.
Moreover, Eisenberg (1998) includes organizational culture when he defines BPR
as the radical redesign of a company’s processes, organization and culture to achieve new
levels of performance that create a breakthrough in the organization. On the other hand,
although Arora and Kumar (2000) do not specifically define BPR, they affirm that BPR
is not a continuous technique for implementing change. Rather, BPR is an incremental
technique, which implies changes that are more radical. Finally, Irani, et al., (2000) say
that BPR is a “vehicle with which to improve performance through radically redesigning
strategic, tactical, and operational processes, together with the procedures, policies,
structures, and infrastructure that support them” (p. 248).
A partially different definition is given by the U. S. General Service
Administration. It defines Government Reengineering as “the fundamental rethinking and
radical design of core processes to bring about dramatic improvements in performance
under political conditions characteristic of the public sector environment” (GSA, 1997,
126
http://www.itpolicy.gsa.gov/mkm/bpr/gbpr/gbpra.htm). Here, changes are bounded by
political conditions found in governmental organizations. Since these political conditions
are externally defined, they would limit the reach of any change with environmental
factors that cannot be controlled by the organization.
Most of the definitions include other aspects distinct from IT. This makes BPR a
more strategic approach, that will include change in all the elements of the organization,
from the way work flows through different business processes, to the way customers and
the organization communicate with each other; all based on a new culture and values
created through the changing process.
2.3.2 Relationship of BPR with Other Techniques
Although BPR emerged as an approach to radical business transformation, Rouse
and Watson (1994) affirm that BPR does not restrict itself to making changes in tasks and
roles; for BPR to succeed it is necessary that crucial behavioral, cultural, and technical
changes be achieved. Burke (1994) affirms that “organization change should occur like a
perturbation or a leap in the life cycle of the organization, not as an incremental process
(p. 23).” Nevertheless, he posits that despite the change being radical, the management of
the change process must be incremental.
Thus, it is possible to affirm that succeeding in radical change implies the use of a
combination of tools and practices that guide the organization to the necessary total
change required. These practices and tools are based on early theories that have been in
use for decades and are brought together by theorists in different areas (Talwar, 1993,
Nader and Merten, 1998). These fundamental ideas can be summarized as the radical
127
redesign of process, the revolutionary nature of the change, and the total commitment of
top management (Biazzo, 1998).
Several other strategies have been developed in recent years to cope with
organizational change, with BPR, Organization Development (OD) Total Quality
Management (TQM), and Change Management (CM) among the most important and best
known. The following paragraphs try to explain the existing relationships among the
different strategies, their similarities and differences.
In contrast with BPR, TQM emphasizes continuous rather than radical change.
Derived from the original concepts developed by W. E. Deming in the late 1940s, TQM
may be defined as the process of changing an organization’s culture or developing the
organization to make it more responsive to customer’s needs, more efficient and effective
(Pike and Barnes, 1994). This management approach is customer driven and instead of
just trying to achieve high profits, TQM proposes that profit will improve as quality
improves and the systems are under control (George and Weimerskirch, 1994).
BPR’s primary criterion, that the organization is a collection of processes that can
be reengineered scientifically and systematically (Biazzo, 1998), has been presented in
early works; for example E. W. Deming, pioneer of TQM, emphasized the importance of
thinking in terms of processes and process control (Vansina and Taillieu, 1996). Rouse
and Watson (1994) report that the theories in socio technical systems present since the
early 70’s the concept of transformation processes of human activities and the resulting
clients being benefited by these transformations as part of the application of systems
theories in the social sciences.
128
Although originally two opposing and competing areas, TQM and BPR are
getting closer as strategies for inducing change in organizations (Jarrar and
Aspinwall, 1999). B. Wright (in Jarrar and Aspinwall, 1999) coincides with Burke
(1994) when he affirms that reengineering of existing processes can be better
achieved using existing TQM activities as facilitators. The authors present a list of
similarities between TQM and BPR, including that both are quality movements,
they need support and commitment, they provide measurable results, the customer
is the focal point, both are focused on processes, results and changes are based on
team work, they need a profound cultural change, and training is the basis of
learning. Finally, Jarrar and Aspinwall, (1999) affirm that since TQM tends to
create a stable organizational culture, it is possible to reduce the stress caused by
BPR when it becomes a reality.
TQM and BPR can be considered similar, since both are based on concepts of process
and organizational change (Al-Mashari and Zairi, 2000). Both use benchmarking, are
focused on customer needs and need performance measures to verify the change process.
They differ mainly in the speed of change. While TQM is based on a continuous
incremental rate of change, BPR is innovative and radical in nature (Al-Mashari and
Zairi, 2000). The integration of both might improve the likelihood of achieving a
successful change. The speed of change can be graphically depicted as in figure 2.1,
which shows that continuous improvement takes more time to reach the expected level of
change than radical improvement. It is important to consider that the need of a radical
change can offset the results by not considering the human variables that in some cases
need time for adjustment (Burke and Trahant, 2000)
129
The classical approach to organizational change uses Organization Development
(OD) to create the motivation and accelerate the processes of change within the
organization. OD has developed from its roots in human relations’ factors to focus on
strategic issues (Farias and Johnson, 2000).
“Organization Development is a long-term effort, led and supported by
management, to improve an organization’s visioning, empowerment,
learning, and problem-solving processes, through an ongoing,
collaborative management of organization culture – with special emphasis
on the culture of intact work team configurations – using the consultant-
facilitator role and the theory and technology of applied behavioral
science, including action research (French and Bell, 1999, p. 26).”
By focusing not only on the human side but also on processes, the OD
professional has the potential of building teams in the organization with a shared vision
and strategy. The OD expert is the facilitator or a neutral third party, which uses
diagnosis as an intervention to promote organizational change by means of changing
attitudes to change behaviors (Harrison and Shirom, 1999, Worren, et al., 1999).
Moreover, Organization Development and other socio-technical theories (Vansina and
Expec
ted i
mpro
vem
ent
Time
Radical
improvement
Incremental
improvement
Continuous
improvement
Fig. 2.1 Difference in outcomes depending on the approach to
organizational change used.Adapted from Murray, et al. (2000).
130
Taillieu, 1996, Rouse and Watson, 1994) see change as a dynamic process but from an
internal point of view and not based on customer requirements. In order to lead to a
planned organizational change, it is necessary to consider values that will focus on
improving the concern for people in the organization. Among those values are shared
leadership, teamwork, empowerment, employee-wellbeing, participation, flexibility and
open communication.
From the definition it is possible to conclude that OD requires long-term effort as
well as long-term commitment. In addition, it requires the full commitment of top
management and the participation of all the members of the organization. Finally, its
main purpose is to improve the processes concerning the products and services the
organization offers (French and Bell, 1999, p. 26, Al-Mashari and Zairi, 2000). Although
BPR also requires the commitment of top management, it is designed for radical change
in a relatively short period of time, such as six months to three years (Skarke, et al.,
1995).
Moosbruker and Loftin (1998) affirm that bringing BPR and OD together is difficult,
but that any model that aims for success in organizational change must include the
principles and practices of organizational development and business practices and
processes. Also they argue that the relationship between OD and BPR inhibits
collaboration between both disciplines. Jang, et al., (1999) establish that BPR facilitates
communication among departments, improving the flow of ideas and goals as work is
passed from one department to the next. The similarities between OD and BPR are
numerous. The main difference appears to be both the focus on internal participants and
long term incremental change defined by OD versus the focus on customer’s needs and
131
radical change that underlie BPR. Thus, it is possible to posit that BPR enables OD to
achieve its objectives by defining the processes that are causing problems within the
organization. Redefining processes within the organization can help in developing
models for organizational change, considering not only the welfare of people, but also
ways to efficiently and effectively reach organizational objectives and goals.
The concept of top management commitment is a basic factor for OD and BPR.
Planning for the change is top down. Reengineering must be directed, supported and led
by the firm’s top managers. Top management commitment and leadership is essential in
institutionalizing change (Armenakis, et al., 1999, Worren, et al., 1999), since they must
convince all the members of the organization that the change is necessary. The goal is to
create a substantive change and in order to succeed it is necessary to have organizational
commitment and follow-up.
Innovative approaches to business transformation have arisen to minimize the gaps
existing between BPR and other organizational change strategies (Cheyunski and
Millard, 1998). As the BPR concept has changed from an IT enabled process change
initiative into a more holistic approach, the social and cultural aspects of the
reengineering process are emphasized (Al-Mashari and Zairi, 2000).
Worren, et al., (1999), define an integrated approach called Change Management
(CM). It is based on two concepts: that human performance is the core of business
performance, and that it is possible to optimize an organization’s revenue and profit
delivery during change. The most important difference between OD and Change
Management is that the latter works through teams of experts on different areas. This
integrated approach is based on the concept that changes in both structure/systems and
132
human processes are necessary to effect attitude and change behavior (e. g., Worren et
al., 1999, Farias and Johnson, 2000, O’Connor, 2000). In addition, there are attempts to
link both OD and Change Management. Cheyunski and Millard (1998) present a
particular accelerated approach that blends business process redesign, information
technology and organization development disciplines in order to accelerate business
transformation. In their paper, the authors define an organizational architect who plays a
significant role in enhancing interdisciplinary work that will enable a successful change.
Change management is the process of considering both the technical and socio-
technical aspects of radical change in order to achieve a successful transformation
(Worren, et al., 1999). Like socio-technical approaches such as OD, change management
focuses on ways in which people and technology can be brought together to optimize
systems and their interactions through social analysis. However, change management
approaches use BPR concepts as they emphasize cross-functional processes that use
technology to improve productivity. Finally, Change Management includes
communication between all the influential elements within and outside the organization
to increase the likelihood of an effective business transformation effort (Cheyunski and
Millard, 1998, Worren, et al., 1999).
Continuous change strategies have failed because they do not demand radical
organizational reforms (Murray, et al., 2000). Continuous improvement approaches do
not work well because they seek to improve existing programs without changing what is
being done. Conversely, radical change methodologies such as BPR involve radical
rethinking and disregarding of existing processes. They seek new design and processes
to provide radical performance improvement. Change management tries to define an
133
intermediate point, combining concepts from continuous improvement approaches and
BPR to develop a process that reaches levels of improvement without the sacrifices and
frustration that radical change programs normally bring in the organization (Grover,
1999, Murray, et al., 2000).
Love and Gunasekaran (1997) affirm that while BPR is a combination of
quantitative tools inherited from industrial engineering, management theory and systems
analysis, in order to be successful radical change initiatives need an organizational
culture change to occur. This culture change does not come only as a result of a change in
the system, but is a change that needs continuity and is a time-consuming and a delicate
process that has to be initiated before the reengineering process (Obeng and Crainer,
1994). Both socio-technical theories and TQM are important tools used to develop this
cultural change in organizations (Armenakis, et al., 1999, Jarrar and Aspinwall, 1999,
Farias and Johnson, 2000, Worren, et al., 1999). It is necessary to combine concepts and
tools from BPR with tools and concepts derived from OD, TQM and CM such as
empowerment, teamwork, continuous improvement, and extensive communication in
order to successfully achieve radical change (Obeng and Crainer, 1994).
2.3.3 Factors Determining a Successful Radical Change Initiative
Significant publications exist that present both successful experiences and failures
when implementing radical organizational change. Hammer and Champy (1993), in their
seminal work on BPR estimated a failure rate of between 50 and 70%, while Kotter
(1995) affirms that few of the radical corporate change efforts he has observed have been
successful no matter what change strategy has been used. Eisenberg (1998) compiles a
134
sample of reports on how reengineering has affected both a company’s performance and
its future vitality. Finally, Walston, et al., (1999) observes that many publications present
serious doubts of the benefits of reengineering.
Other authors report successful stories of BPR implementation on specific
projects (e. g., Hammer and Champy, 1993, Kennedy, 1994, Bisson, et al., 2000, Cooper,
2000, Gunasekaran and Adebayo, 2000, Kettl, 2000). Walston, et al., (1999) report that
although reengineering did not improve the average cost position of hospitals under BPR
projects, it was possible to notice a significant percentage of hospitals having better
processes from the experiences gained from the projects. Maull, et al., (1996) present a
series of case analyses explaining the success of BPR in different companies in the U. K.,
while Drew (1994) does the same but applied to financial services in the U.S.A. and
Canada. Finally the literature presents several examples of success in specific projects at
government agencies in the United States and other countries (e.g., Caudle. 1994, Libbey,
1994, Mechling, 1994, Veasey, 1994, Narasimhan, et al., 1997, Jang, et al., 1999,
McGarry and Beckman, 1999, Allan, et al., 2000, and Thong, et al., 2000).
Hall, et al., (1993) report deterioration in the overall results of observed
companies, even after years of careful redesign and dramatic improvements in individual
processes. On this line of thought, Martínez (1995) affirms that despite the hard work and
determination, reengineering and other radical change efforts have been only marginally
successful. He reports that progress in the analysis stages was significant, while
developing and implementing new models was much more difficult. Problems with
organizational resistance, communication, integration and commitment were the most
common found in his study.
135
Why does radical or transformational change fail? The first difficulty in
implementing any radical change project is that there is little agreement among
practitioners about what radical change means (Talwar, 1993). Eisenberg (1998) argues
that in practice radical change, especially reengineering projects, has become similar to
downsizing. The problem, Eisenberg (1998) adds, is that reengineering has been
incorrectly applied as an expedient cost cutting tool rather than for the original objective
of changing the organization. BPR has to be considered an organizational change strategy
rather than simply a “quick change” tool (Kettinger, et al., 1997).
In addition to correctly defining BPR, it is important to correctly define the key
factors that need to be considered as determinants in any BPR project (Biazzo, 1998).
The literature presents a vast amount of research aimed to define critical factors
necessary to successfully implement BPR. Table 2.2 presents a summary of some of this
research and the most important factors defined.
Hammer and Champy (1993) list some of the common errors to avoid in order
succeeding in a radical organizational change project. They affirm that “the most
important concept to grasp is process… to manage businesses around their processes “(p.
219). A business process is “the logical ordering of sequential functional level activities
which take inputs and produce outputs which are of value to some customer (Crowe and
Rolfes, 1998, p. 116).
136
Table 2.2 Critical success factors to achieve critical change
Author Factors Hammer and
Champy, (1993)
Integrated effort, business processes definitions, definition of mission, goals and objectives
of the organization and the BPR effort, top management commitment, top-down process,
few but important projects, clarity in the definition of BPR, leadership, allocation of
resources, human implication.
Hall, et al., (1993) Roles and responsibilities, measurements and incentives, organizational structure,
information technology, shared values and skills, span, extent, leadership
Talwar, (1993) Extent of the reengineering project.
Drew, (1994) Past experiences in BPR, number of active projects, number of core processes identified,
use of benchmarking, new IT, criteria for selecting BPR projects, teamwork, planning
systems, knowledge of BPR, coping with organizational stress and management resistance
to change.
Kennedy (1994) Teamwork, understanding of human implication
Cooper and Markus
(1995)
People empowerment, commitment.
Obeng and Crainer
(1994)
Participating people, stakeholders.
Lee (1995) Organizational culture, leadership style, collaborative work environment, top management
commitment, change in management systems, formalization of tasks.
Fagan (1995) Innovation, creativity, work environment.
Clemons (1995) Defining functional and political risks
Kotter (1995) Establishing sense of urgency, having vision, removing unnecessary obstacles, powerful
teamwork and organizational culture, communication, change process methodology,
planning for short and long-term results, time horizon, project duration.
Maull, et al., (1996) The change proposed, performance measures, IT, influence of human factors, processes
architectures, link between BPR and corporate vision, mission, objectives and strategies.
Love and
Gunasekaran (1997)
New skills, motivation, IT, structural changes, cultural changes, communication,
integration, teamwork.
Narasimhan and
Joyaram (1998)
Identification of core processes, identification of customer types and requirements, project
planning, systems view, design principles, methodology, data availability and reliability,
employee involvement, project interfaces, project management, performance measures,
processes ownership.
Guimaraes, (1997) Use of outside consultants, customer oriented BPR, BPR education and training,
empowerment, efficiently use of resources, project plan, project management, few critical
processes, IT as enabler, use of automation, continuous improvement culture, integrated
approach, communication, previous experience, process mapping and definition, top-down
process, top management commitment.
Beugre, (1998) Justice considerations.
Jaffe and Scott
(1998)
Top-management leadership and commitment, whole system involvement, flexibility,
structure, methodology, measurement.
McGarry and
Beckman (1999)
Customer, market, environment, product, expertise, processes, management,
empowerment, motivation, teamwork, structure, communication, technology,
commitment, culture.
Wu, (2000) Customer oriented processes and organization.
Arora and Kumar
(2000)
Definition of goals and expectations, considering human factors, simple and well designed
projects, considering customer needs, availability of data, effective and efficient use of IT,
long and short-term planning, performance measures, attainable expectations.
Thong, et al., (2000) Favorable public opinion, pilot implementation, approval of redesign methodology,
staffing from neutral staff, neutralizing social and political influences.
137
Giaglis (2001) defines processes as:
“A collection of decision models, each of which is identified by the type
of decision and contains a sequence of processing tasks. These tasks are
the smallest identifiable units of analysis, and their optimum arrangement
is the critical design variable determining the efficiency of the resulting
approach (p. 210). “
The concept of cross-functional processes, shown in figure 2.2, is the foundation
of BPR and has the potential to change the way people traditionally define the structure
of an organization (Crowe and Rolfes, 1998, Jang, et al., 1999).
As Crowe and Rolfes (1998) posit, the traditional organization chart shows the
organization as a set of departmental hierarchies located according to the organization’s
structure. The traditional view of the organization as a departmental hierarchy limits the
existence of activities across the different functions, promoting the separation of
activities. Results of the traditional view are:
- People cannot see that the output of their work is the input of others.
- Departments are isolated without communicating common goals, tasks and outcomes.
- Core ideas, objectives and goals can be distorted or lost as activities are performed in
different departments.
Work flow
Fig. 2.2 Cross-functional activities within a traditional organization. From Jang, et al., 1999.
138
BPR emphasizes cross-functional processes as opposed to hierarchies, giving
special emphasis to customer satisfaction. Processes are strategic assets that go beyond
the traditional definition of function to a more integrated view (McCormack and Johnson,
2001).
Different authors also recognize the extent of a radical organizational change
project as an important critical success factor. Talwar (1993) affirms that from BPR as
change methodology have emerged two major categories of initiatives. The first and
more common category is the process redesign, whose emphasis is to identify one or
more core processes and redesign their execution. The second category is the business
reengineering, which involves a “strategy-driven, top-down revision and redesign of the
total business (p. 24)”.
Clemons (1995) on the other hand, defines reengineering as referring to any of
three degrees of fundamental business change: business process redesign, process
innovation and business revision. From this perspective, it seems to us that some of the
errors observed by Hammer and Champy (1993) are so narrow that merely to avoid them
will not necessarily guarantee successful implementation of a BPR project. It is
necessary to recognize that BPR is not the radical change of isolated processes, but
instead it is an integral transformation of all the organization’s systems and processes
(Kettinger, et al., 1997).
Hall, et al., (1993) identify a set of crucial organizational factors, summarized in
table 2.2, that are to be considered in any reengineering project. These factors will be
both motivators and measures of the three critical determinants for succeeding in a
reengineering project, which they define as:
139
- Span or Breadth: whether the project is set up to improve performance across the
whole business.
- Extent or Depth: the extent of change of the six organizational elements as a result of
the BPR project.
- Leadership: the extent of top management commitment.
Drew (1994) classifies critical factors associated with success as firm specific and
project-specific. In this study success was measured in terms of improved customer
service, cycle-time reduction, handling increased volume of transactions, headcount
reduction, cost savings and overall success of the project. He presents causes of potential
failure of reengineering. Among the barriers uncovered in his research organizational
stress due to changes resulting from the project was the single most important, with
managerial resistance to change the second greatest barrier. Loss of power, new
managerial approaches and increase in the workload were the main causes of this
resistance. Finally a third barrier was the lack of knowledge and skills to make BPR a
success. Other less significant barriers found were employee resistance to change, poor
communication, skepticism and customer/supplier resistance to change.
Kennedy (1994) presents two successful cases of BPR in the U. K. She concludes
that since the object of BPR is to redesign a business around core processes, the threat to
management is more than simple words. According to her article, the redesign of
business processes requires the use of cross-functional, multidisciplinary teams. The team
becomes an important element of the reengineering process, with the organization
flattening as individual functions disappear, becoming cross-functional processes. Yet,
she adds, it is possible to reduce the headcount, and the resistance to change, if the
140
reengineering project is planned from the start with top management fully understanding
the human changes involved. Her findings are consistent with those presented by Cooper
and Markus (1995). They affirm that the engine of reengineering is not reengineering
analysis, but managers and people who do the work. People need to be committed to the
reengineering process, not only trained to be part of the reengineered processes.
The factors influencing the success or failure of BPR implementation must be
explained considering a holistic approach of the organization, including not only direct
participants of the reengineering project but also the effect on the organization’s
stakeholders and customers, and the effect that internal and external behavior have on the
project (Obeng and Crainer, 1994). They define stakeholders as people needed as
resources, people who will be part of the redesign processes but are not part of the
reengineering team, people who are going to be affected by the change, and people on the
sidelines that will not be part of the change process but can affect it. All of them have
their own motivation and agenda and can affect the outcome of the reengineering process
(Irani and Rausch, 2000).
Lee (1995) does an empirical research on BPR critical success and failure factors.
The author classifies the crucial factors affecting BPR implementation as organizational
culture, organizational structure and management support. The author also identifies
resistance to change as a critical failure factor of BPR implementation. One possible
limitation of this study is that it was addressed only to the people directly involved in the
reengineered process, either managers or users, not top management and stakeholders.
Also the study does not specifically explain how the degree of success was measured,
141
although it defined as success variables time reduction, cost reduction, output quality and
quality of work life (Davenport and Short, 1990).
Fagan (1995) studies the effect of creativity, innovation and work environment
among the IT personnel involved in a BPR process. She concludes that in order to be
successful in a BPR effort, personnel directly involved with the initiative must have a
higher degree of creativity and initiative than personnel involved in any common
development or improvement within the organization.
Clemons (1995) characterizes the risks that could affect BPR projects. Although
he defines financial, technical, project, functionality and political risks, he considers
functionality and political the two most critical.
- Functionality risk is the risk of making the wrong changes to systems and processes,
or making inadequate changes that do not accommodate strategic needs.
Overconfidence and intellectual arrogance are examples of issues included under this
characterization.
- Political risk is the risk that the organization will not complete the project, either
because of serious internal resistance or because of a gradual loss of will.
Kotter (1995) on the other hand, points to two lessons to be learned from the most
successful cases. First, a change process usually requires a considerable length of time.
Skipping steps in the logical process of change creates an illusion of speed and does not
produce satisfying results. Secondly, there are mistakes that can, in any phase of the
change process, have devastating impact. These possible pitfalls can be converted to
success factors with the influence of the right people participating in the change process
(Kennedy, 1994, Cooper and Markus, 1995).
142
Maull, et al., (1996) reported on the implementation of BPR projects in 25
companies. They found that six key issues affect the way in which BPR is carried out:
the change proposed, the performance measures used, the impact of information
technology, the impact of human factors, the presence or absence of a process
architecture and the link between BPR and corporate strategy. In their article, they make
clear the importance of having accountability for the different business processes and the
importance of IT as a tool enabling a successful BPR initiative.
Moreover, Beugre (1998) in a more humanistic orientation argues that many BPR
projects fail because they do not consider justice issues. In order to improve the success
of BPR projects, managers should consider justice issues at four levels:
- Distributive injustice occurs when a person does not get the rewards he or she
expected in comparison with the rewards others get.
- Procedural justice concerns the fairness of procedures. Procedures are considered fair
when people have control over outcomes and participation in developing different
options to influence the outcomes.
- Interactional justice refers to the quality of interpersonal treatment people receive
during the implementation of a change process.
- Systemic justice refers to perceptions of fairness concerning the organization as a
whole.
Jaffe and Scott (1998), define as critical elements for success in a BPR project
aspects such as fully engaged top leadership, visibility of change leaders, broad, whole-
systems involvement and building capability to sustain change. McAdam (2000) divides
over fifty different critical factors of success in small and medium enterprises into six
143
categories: resources, leadership, flexibility and change, structure, methodology and
measurement. Note that McAdam’s “resources” were found important but not critical by
Lee (1995). Leadership, flexibility and change, structure and methodology are implicit as
critical success factors in one way or another in the previous references. Although
measurement is also implicit in some of the references presented so far, it is important to
mention that Hammer and Champy (1993) consider that processes are the key of any
reengineering effort, and that it is necessary to have a set of tools to measure the level of
success. In other words, the process must be accountable to the user or customer of this
process. Standard measurements must be developed and must include three types of
information: time, overall outcome and customer satisfaction (Scherr, 1993).
Several authors define IT as one of the main factors that make BPR possible (e.
g., Hammer and Champy, 1993, Martínez, 1995, Clemons, 1995, Al-Mashari and Zairi,
2000, Clarke, et al., 2000), but Love and Gunasekaran (1997) and Irani and Rausch
(2000) consider that there are other factors as important as IT to enable BPR. Love and
Gunasekaran (1997) group these factors as four enablers of the reengineering process: IT,
human resources, organizational elements, and total quality management.
Wu, et al., (2000) support this idea when they affirm that it is the internal or
external customer of the process who defines not only the critical success factors of the
process, but also the performance measures, the processes necessary to achieve these
success factors, the organizational structure to operate these activities, the people and
their competencies within the structure, the IT system to support the information flow,
and the resources required by the redesigned processes.
144
Arora and Kumar (2000) surveyed twenty-five firms to determine what factors
trigger reengineering, the nature of reengineering projects and common causes of failure
among the studied firms. Based on their experiences and findings, Arora and Kumar
(2000) present some basic guidelines for reducing the chance of failure. Among the most
important are the necessity of having evidence that the BPR initiative is likely to succeed,
flexibility and reliability of the new processes and the identification of internal and
external customers, the same as the identification and definition of the various supply
chains surrounding and influencing the organization.
Caudle (1994) presents a discussion of strategic reengineering issues in
government. The author mentions several issues important in the successful
implementation of BPR in government. Although most of the issues are similar to the
factors defined previously in this article, the author introduces a different factor that is
important in a governmental agency. This factor is concerned with the leadership time
dimension and is important because motivation and change efforts can be affected by the
cycle of executive and legislative elected officials. This factor allows two to four years to
generate, develop and implement a reengineering effort before it can be affected by the
priorities on projects of the new elected executives.
The U. S. Government, preoccupied with accomplishing the goals of the
Government Performance and Result Act (GPRA) that requires state and federal
comprehensive reforms, is also interested in defining critical factors common to
government agencies. In that sense the U. S. General Accounting Office ( GAO, 1995)
developed a guide for assessing the BPR effort in government. The purpose of this guide
is to provide GAO evaluators and other auditors with a framework for assessing how well
145
federal agencies are addressing the key tasks and risks associated with reengineering. The
guide has three major assessment areas: assessing the BPR case, assessing projects
management and process analysis activities and assessing implementation and results.
The U. S. General Services Administration (GSA, 1997) published a Government
BPR Readiness Assessment Test in order to identify critical success factors at the earliest
stage before making investments in time, money, and human resources. Because of the
differences between government and private organization, this test accents specific
characteristics of government BPR. The GSA Readiness Assessment Test is a seventy-
three-question instrument divided in seven sections: leadership, planning and
communication, integration of technology and BPR, anticipated risks, identification of
resources and roles, existing performance measures and structured reengineering teams.
Narismhan and Jayaram (1998) developed a longitudinal case study in an Indian
state office. They found twelve critical factors that can influence the results of a BPR
project including system view of the process, project planning, clarity of objectives,
identification of core processes, identification of customers and stakeholders, customer
orientation, multiple sources of data, employee involvement, a method for evaluating
alternatives, process ownership, communication, project orientation, strategy for change
and identifying other project interfaces.
Finally, Thong, et al., (2000) present how BPR may be different in a public
organization. They developed a case study at the Housing Development Board in
Singapore, finding unique factors for public sector management such as high resistance to
change influenced by social and political factors, public opinion, staffing from neutral
staff, approval of redesign procedures and pilot implementation.
146
Burke and Litwin (1992) affirm that many reengineering projects have failed
because they ignored human variables. They identify the variables that need to be
considered in any attempt to predict and explain the total behavior output of an
organization, the most important interactions between these variables and how they affect
change.
Burke and Litwin (1992) define two types of variables that are involved in the
change process. Transformational variables are concerned with the areas in which
alteration is likely caused by interactions with environmental forces and will require an
entirely new behavior from the organization. Transactional variables, on the other hand,
are related to those elements whose primary ways of alteration are via relatively short-
term relationships and internal forces. Tables 2.3 and 2.4 define these variables.
Business Process Reengineering looks for dramatic improvements through radical
internal changes, not simply improvement, of the organization. These changes include
cultural, human, technological and procedural changes and have to be planned and
implemented according to some change strategy previously developed by a committed
top management. Achieving radical change requires more than using an isolated theory.
It requires a combination of concepts from radical change methodologies to socio-
technical and continuous improvement theories that when correctly used will result in a
new organization able to overcome the everyday dramatic changes that our business
environment is enduring.
The following sections include concepts and techniques to model complex
systems, relating the need of dynamically modeled organizational change with several
modeling methodologies commonly used in engineering and decision sciences.
147
External
Environment
Burke (1994) defines it as any outside condition or situation that influences the performance of the
organization. Environment includes factors such as institutions, groups, government, market pressure and
trends and technology. Environment makes demands to the organization, places constraints to actions and objectives but also provides opportunities (Nadler and Tushman, 1983).
Burke (1994) and Harrison (1994) suggest that the pace (slow or fast) and the complexity (simple, complex) of the environmental requirements to the organization are elements that define the influence of
the environment in the change process.
Porter (1998) defines five competitive forces that affect or determine the ability of forms to generate
profitability and adequate performance. These forces are: potential entrants, suppliers, substitutes,,
buyers, and industry competitors.
Some other elements to consider could be: government policies and regulations, institutional trends,
social influences
Mission and
Strategy
This factor can be defined as “what employees believe is the central purpose of the organization and the
means by which the organization intends to achieve the purpose over an extended time. Burke, 1994, p.
74)”. This factor is critical because it determines how the organization is going to cope with the environmental requirements.
It is a function of (Burke and Litwin, 1992, Nadler and Tushman, 1983): what management believes are the mission and strategies, what employees consider is the central purpose of the organization, and how
the organization intends to achieve the mission.
Leadership Leadership is the “aspect of managerial activity that focuses on the interpersonal interactions between a
leader and subordinates (McAfee and Champagne, 1987, p. 303)”
It is important to realize that any change initiative must come from top management because of the broad
vision and authority level necessary to define the necessity of change (Hammer and Champy, 1993).
Leaders must have enough power and influence to guide a change process and to convince people to be
part of the process.
Leadership is an integral element of managerial practices. It is the behavior presented by management
that guides and encourages organizational members to achieve the mission and to accomplish the established strategies (Yuki and Van Fleet, 1992).
Leaders can be transformational and transactional (Deluga, 1988). Transactional leaders are reactive to the situational contingencies and are engaged in a “bargaining relationship with employees (Deluga,
1988, p. 457). Transformational leaders, on the other hand look for encouraging employees to act
according to the organizational mission by changing behaviors and personal actions (Deluga, 1988, Burke and Litwin, 1992).
Organizational
Culture
Burke (1994) defines culture as “the collection of overt and covert rules, values, and principles that guide
organizational behavior and that have been strongly influenced by history, custom and practices (pp. 74-
75).”
Thus, Organizational Culture provides a social environment to which individuals must be adapted in
order to fit in or survive (Cooke and Rousseau, 1988), providing a “meaning systems” to organizational members (Burke and Litwin, 1992, p. 532).
Frank and Fahrbach (1999) affirm that individual behaviors are affected by the information that is exposed to them during the interaction with other individuals. They will look for balance either by
adjusting their behavior or by interacting with other individuals with the same beliefs. Organizational culture is the mean used by the organization to develop the formal and informal communication channels
needed by the individuals to response to internal and external effects.
Table 2.3 Transformational variables
148
Structure As Burke (1994) states it is “the arrangement of functions and people into specific areas and levels of
responsibility, decision-making authority, and relationships (p. 75).”
Lee (1995) affirms that three structural variables have an influential effect in innovation and change:
– Centralization: it is the degree of participation of the organizational members in the decision
making process.
- Formalization: it is the degree to which job duties are codified in written description, the existence of rules and regulations and the use of systematic reward systems.
– Complexity: is given by the degree of complexity in which communication and authority is
performed (Van de Ven and Ferry, 1980). A highly complex organization will present a structure oriented toward isolated functions and areas (Myles, et al.1991). Since integration of labor is an
important element in process definition during a BPR project, it is necessary to assess the level of
integration existing in the organization.
Management
Practices
Although managers are leaders that guide and influence organizational behaviors (Yuki and Van Fleet,
1992), it is important to define practices that managers use during normal course of events to use the
human and material resources to carry out the organization’s goals and strategies (Burke and Letwin, 1992, Burke, 1994).
Different managerial practices can be identified in the literature (Luthans, et al., 1988, Yuki and Van Fleet, 1992): planning/coordinating, staffing, training/developing, processing paperwork,
monitoring/controlling performance, motivating/reinforcing, interacting with outsiders, managing
conflict, and socializing/politicking
Systems As Burke (1994) affirms, the systems are the set of standardized rules, policies and mechanisms
developed and used to facilitate work and processes.
This variable is similar to formalization as defined by Lee (1995). Formalization “refers to the extent to
which job duties are codified in written description, rules and regulation, and employees are evaluated
according to highly codified and specific procedures (Lee, 1995, p. 65)."
Van de Ven and Ferry (1980) add to the definition of formal systems the element of standardization.
They define standardization as the “degree to which work rules, policies, and procedures are formalized and followed in an organizational unit (p. 161)”, and they present a set of questions directed to measure
the degree of formalization and standardization that exists in an organizational unit.
Climate Climate can be defined as “the collective current impressions, expectations, and feelings of the members of local work units, all of which in turn affect members’ relations with supervisors, with one another, and
with other units (Burke, 1994, p. 75)”.
Burke and Litwin (1992) affirm that climate is referred to a local level of analysis. That is, climate is
more related with the work unit or team while culture is a more general, organizational concept. On the
other hand, Cooke and Rousseau (1988) posit that there are different organizational subcultures within an organization. The different environments within the organization define these subcultures. Subcultures
can be aligned with the dominant culture or can be contrary to it, creating conflicts both horizontally and
vertically.
Tasks
requirement
and individual
skills/abilities
It is the “behavior required for task effectiveness, including specific skills and knowledge required for
people to accomplish the work assigned and for which they feel directly responsible (Burke, 1994, p.
75).”
Van de Ven and Ferry (1980) consider Job Specialization, Job Expertise, Job Standardization, Job
Discretion, and Job Incentives as characteristics defining Job Design Factors. Job Discretion and Standardization are also measures of centralization and formalization, thus have to be carefully used in
order to avoid confusion in the measurement process.
Individual
needs and
values
They are the specific psychological factors that provide desire in the workforce, including job
enrichment, job satisfaction and personal values (Burke and Litwin, 1992).
While values are a “very broad, general belief about some end state such as honesty or an exciting life
(McAfee and Champagne, 1987, p. 37)”, attitudes are more local and focused in individuals (McAfee and Champagne, 1987, Rogers and Byham, 1994).
Motivation Is the energy generated by the combined desires for achievement, power, affection, discovery used to
move toward goals until satisfaction is attained (Burke, 1994).
Performance
measures
De Haas and Kleingeld (1999) define performance measures as “a formula or rule that enables quantification of performance (p. 234)”. Performance measures are indicators not only of outcomes but
also of the effort and achievements of the organization and its members (Burke and Litwin, 1992)
Table 2.4 Transactional variables
149
2.4 Organizational Change and Modeling Methodologies
2.4.1 The Organization as a Complex System
Amburgey, et al., (1993) defined organizations as “structured systems of routines
embedded in a network of interactions with the external environment (p. 52)”. According
to Gharajedaghi, (1999) an organization is a “voluntary association of purposeful
members who themselves manifest a choice of both ends and means (p.12).” The
organization is simultaneously a social and technical system (Burke, 1992).
Organizations have technology, which is oriented to produce tangible or intangible
products. In addition, organizations are composed of people, or stakeholders, “who
depend on the organization for the realization of some of their goals, and in turn, the
organization depends on them in some way for the full realization of its goals (Kueng,
2000, p. 69)”. They interact around the processes performing operations using the
technology present in the organization.
On the other hand Fox, et al., (1996) consider an organization “to be a set of
constraints on the activities performed by a set of collaborating agents (p. 124).”
Resistance to change occurs because organizations are embedded in the institutional and
technical structures of their environments (Amburgey, et al., 1993) and it is important to
understand these structures and participating agents in order to understand and clearly
define both the process and content of change.
As Skarke et al., (1995) affirm, if organizational change could be viewed only as
affecting the technical systems in the organization, developing organizational change
would be a relatively easy task. They add that since organizational change requires
people to modify their beliefs, feelings and behaviors, the complexity of the change
150
process significantly increases. A social system has not only goals, but also the purpose
to attain them. Attaining global goals is not the sum of individual processes performances
but the synergistic effect obtained by optimizing the organization’s effectiveness
(Doumeingts, et al., 2000). Thus, it is necessary to understand the interaction of the
different variables involved in optimizing the organization.
A system is “a collection of elements such as people, resources, concepts, and
procedures intended to perform an identifiable function or serve a goal (Turban, et al.,
1999, p. 40)”. Figure 2.3 graphically describes the different elements of a system.
Systems are composed of inputs, outputs, processes, feedbacks and controls, and
system and environmental boundaries (Turban, 1999, Wu, 1994). At the same time,
systems have subsystems within the main system that are interconnected and cooperate to
accomplish the common system objective (Wu, 1994).
Organizations are dynamic systems since they are unstable, unpredictable and
have the internal capacity to reconfigure themselves into new forms after a dramatic
change (Kiel, 1994, Anderson, 1999). Sterman (2000) adds that organizations have
sub systems 3
sub system 1
Environmental disturbances and
influences
System's boundary
Environment
Feedback and control
sub systems 2
sub systems 2
sub systems 2Inputs Outputs
Fig. 2.3 Graphical representation of a system. Adapted from Wu (1994) and Turban, et al. (1999)
151
dynamic complexity since they have complex relationships that allow them to be self-
organizing and adaptive. He adds that social systems within the organization are policy
resistant and characterized by trade-offs, with tight relationships within the different
elements composing the social systems. Finally, the response to change of a dynamic
organization is non-linear (Anderson, 1999, Pascale et al., 2000, Sterman, 2001). .
Effects are rarely proportional to causes, and outcomes are different locally in the system
than in distant regions of the area where the cause was generated.
Sterman (2000) defines policy resistance as the action when “policies are delayed,
diluted, or defeated by the unforeseen reactions of other people or nature (p.3).”
Moreover, Larsen and Lomi (1999) assert that:
“The problematic relationship between strategy conception
and execution on the one hand, and between strategy
execution and its consequences on the other, is rooted in the
observation that business organizations exhibit many of the
characteristics of policy-resistant dynamical systems (p.
407).”
Complexity in policy resistance systems arises from the interactions of the
system’s most significant variables over time (Sterman, 2001). As Bal and Nijkamp,
(2001) affirm, in complex systems, initial conditions may exert a significant impact on
the system’s outcomes. These variables have to be studied and understood in terms of
time, effect, influences and complete interaction of the change process within the system
and its environment, and since the real world is constantly evolving, any study over
complex systems can be considered as a sample of a complex universe. The results of the
study, they add, are then valid for the specific contextual and environmental conditions
defined initially.
152
The traditional approach to analyze organizations has been based on a functional
perspective (Wu, 1994). As shown in figure 2.4, using this functional approach
organizations are broken down into individual functions and each of them is analyzed
separately, assuming that individual behaviors are additive.
But organizational behavior cannot be defined as an aggregate concept composed
of individual entities with the same average behavior (Anderson, et al., 1999). It is
necessary to define the organization as a set of subsystems all of them interrelated. The
fundamental idea of seeing the organization from the perspective of a system approach
(see figure 2.5), or system thinking, is to analyze it from an overall perspective,
considering the different elements in their entirety (Wu, 1994).
A
B C DC
D
Fig. 2.4 A functional view of the organization From Wu, 1994
21
4
3
2
3
Fig. 2.5 The organization from a system thinking approach From Wu, 1994
153
It is possible to define systems thinking as a way to view the organization from a
holistic point of view, trying to explain how to handle interdependent variables within a
social system (Gharajedaghi, 1999, Gupta, et al., 1999). It is possible to define the
organization as a voluntary association of members with a common purpose. Systems
thinking tries to respond to the challenge of combining the complexity of the organization
with the interdependency, self-organization and choice in the context of social
organizations (Gharajedaghi, 1999).
To explain the concept of voluntary association and how interdependent variables
influence the purposefulness of the organization it is necessary to put the system in the
context of the larger environment of which the organization is part. Introducing the
system in the context of a larger environment defines the principle of the principal world-
view. Gupta, et al (1999) define the concepts on which this principle is based:
- Systems as cause: the dynamics of a system is a result of the relationships of causes
within the system.
- Operational thinking: it is possible to see the system in terms of how it really works,
and to build an understanding of the interdependencies and causalities within the
system.
- Close-loop thinking: from a systems thinking approach, causal relationships can be
seen as reciprocal. Factors can be both cause and effect and they cease to be the
relevant unit of causality; with the main cause being the relationships among
variables within the system and between the system and the environment.
154
Jackson (2001) widens the concept of systems thinking when he defines the concept
of critical systems thinking as combining concepts of social theory and systems thinking.
He affirms that critical systems thinking
“is essentially about putting all the different management sciences
methodologies, methods and models to work in a coherent way,
according to their strengths and weakness, and the social
conditions prevailing, in the service of a general project of
improving complex societal systems (Jackson, 2001, p. 238).”
According to Jackson (2001) there are three types of critical systems approaches
that can be used to describe a complex system. Hard or fundamentalist methodologies
assume that the real world is systemic and modeling and analysis is conducted following
these premises. Soft or interpretive methodologies do not necessarily assume the world is
a system. The modeling and analysis is creative and may not be conducted under the
assumption of a systemic world. Finally, emancipatory or radical methodologies assume
that the real world can become systemic in a manner alienating to individuals or groups
of individuals. Models and analyses are performed in order to identify biases and
alienation and are oriented to show the disadvantages of the current situation. Finally, the
author adds that no methodology is isolated and unique. While a dominant approach can
be used to describe a complex system, dependent views can be used to describe new
paradigms and possible alternate actions.
Translating a complex social system into a model that is credible and appropriate
becomes a monumental but challenging and necessary task for the theorist and
practitioner of organizational change. The next sections introduce the basic concepts of
modeling and review some techniques that might be interesting to explore as tools to
model complex systems.
155
2.4.2 Fundamental Concepts of Systems Modeling
Due to the complex relationships and great amount of variables involved in the
organizational change process, it is necessary to use a tool that allows theorists and
practitioners to understand the different variables and elements comprising any
organizational change initiative.
Models are directed toward the ideal representation of complex systems (Mcleod,
1998, Turban, et al., 1999) or entities, and are part of everyday life (Hillier and
Lieberman, 1990). Vernadat (1996) defines a model as:
“Useful representation of some subject. It is a (more or less formal)
abstraction of a reality (or universe or discourse) expressed in terms of
some formalism (or language) defined by modeling constructs for the
purpose of the user. In other words, A is a model of reality B for an
observer C, if C can use A to obtain information on B (p. 24).”
Vennix (1996) presents a similar definition. He says that “a model is an
external and explicit representation of part of the reality as seen by the people
who wish to use that model to understand, to change, to manage and to control
part of the reality (p. 15).”
Representation of real systems through models can be done at various
levels of abstraction (Turban, et al., 1999). Depending on the level of abstraction
at which they express the information they contain, models can be classified as:
- Mental or narrative models: seldom recognized as a model (McLeod, 1998),
they describe the system or entity with written or spoken words. As Turban,
et al., (1999) affirm, normally mental or narrative models provide a
description of how a person thinks about a situation and include beliefs,
assumptions, relationships and structures, as they are perceived by an
156
individual or a group of individuals. Developing a mental model is usually the
first step in the modeling process since they normally are used to describe and
define problem structures or perceptions (McLeod, 1998, Turban, et al.,
1999).
- Iconic or physical models: they are a physical representation of tangible
entities. They are considered the least abstract type of model since they are
normally a three-dimensional replica to scale or photograph of the entity to be
represented (McLeod. 1998, Turban, et al., 1999).
- Analog models: contrary to the physical or iconic model, analog models do
not look similar to the entity they represent but behave like it. Maps,
organizational charts, and simulators are examples of these models (Turban, et
al., 1999).
- Symbolic models: are those in which the properties of the system or entity are
expressed with symbols (Pegden, et al., 1995). They can be expressed either
graphically or in terms of mathematical equations. A graphic model represents
an entity by an abstraction of lines, shapes, forms or symbols. Organizational
charts, flow charts or graphics are examples of these types of symbolic
models. Mathematical or quantitative models, on the other hand use
mathematical symbols, equations and relationships to express the complexity
of real systems. They are the highest form of abstraction and are normally part
of a more complex modeling abstraction, usually using a combination of
model typologies (Turban, et al. 1999, Taylor and Karlin, 1994).
157
McLeod (1998) affirms that mathematical models account for most of the business
interest in business and management modeling. Hillier and Lieberman (1990) define
certain common elements of a mathematical model. These elements are: the decision
variables that represent the quantifiable decisions to be made; the objective function that
represents the appropriate measure of performance to be optimized; the constraints,
which are restrictions to the possible values assigned to the decision variables; and the
parameters, which describe the factors that limit the problem. Although the parameters
tend to be constants, they are not under the control of the modeler, and are independent of
the model solution.
Kammath (1994) classifies mathematical models in terms of their purpose and how
the model is solved. Based on the purpose of the mathematical model, it is possible to
classify them in the categories of evaluative or descriptive models and generative or
prescriptive models. Evaluative models describe the situation of the system and define
the objective function in terms of a defined set of decision variables that meet a certain
set of constraints. On the other hand, generative or prescriptive models (also known as
optimization models) prescribe a set of actions or decision variables that meet certain
performance criteria or objective functions.
Based on the solution methodology, mathematical models can be classified as
analytical and simulation models. Analytical models are based on mathematical
relationships that are solved by means of computational procedures or algorithms.
Although oriented to find the optimal solutions of a model, optimality tends to be an ideal
concept. As a result of this concept, analytical models are solved using a heuristic
158
procedure that does not guarantee an optimal solution, but the best possible solution that
can be found (Hillier and Lieberman, 1990).
A simulation model, on the other hand, predicts the behavior of complex systems by
mimicking the interactions and relationships that exist among the components of the
system (Pedgen, et al., 1995, Kammath, 1994). As Pedgen, et al. (1994) affirm, through
experimentation using simulation models it is possible for a decision maker not only to
describe the behavior of the system but to construct propositions or theories that account
for the observed behavior.
A prescriptive or generative model can be classified according to the type of
prediction that it makes (Tayor and Karlin, 1994). Deterministic models predict a single
outcome from a given set of decision variables. Stochastic models predict a set of
possible outcomes as a function of the probability distribution of the different decision
variables.
A slightly different prescriptive model is the causal mathematical model. A causal
model tries to describe the best causal relationship between variables and predicts
possible effects on the dependent variables as result of a change in the input or
independent variables of the model (Cryer and Miller, 1991). Cook and Cambpell (1979)
present a detailed discussion of the philosophical aspects and meanings of causality, but
for the purpose of this research a causal relationship between two variables x and y exists
if it “implies a time dependent controllability of x over y; y follows x in time and x is a
necessary and sufficient condition for y (Klabbers, 2000, p. 382).”
Loehlin (1998) introduces two types of causal models, one in which the different
variables present in the relationship are observed and another in which some of the
159
variables are unobserved or latent. Typical cases of the formers are regression models,
which try to define the best linear causal fit between the observed variables. On the other
hand, latent causal models or latent variable analysis have been developed for dealing
with situations where multiple variables, some of them unobserved, are involved.
Encompassed in this category are path analysis, factor analysis and structural equations
modeling. Loehlin (1998) and Pearl (1999) among others, present the theoretical
foundations and a detailed analysis of these methods.
With respect to causal models, Pearl (1999) mentions that they are different from
probabilistic models in that probabilistic models show how probable events are and how
probabilities may change with subsequent observations, while causal models tell, in
addition, how these probabilities change as a result of external interventions. The ability
of a causal model to predict the effect of these interventions, Pearl (1999) adds, rests on
the knowledge that causal relationships can be defined and that the system will respond to
interventions locally, that is, only under the specified causal relations.
Klabbers (2000) reflects on the limitation of traditional mathematical models when
modeling social systems. The author summarizes these limitations as: inadequate
knowledge of the state of the system; limitations in the identification of the system;
interconnected systems are difficult to model by discrete equations; the need of a
multidisciplinary approach to define the state variables, which normally are of different
and incompatible dimensions, and difficulties in obtaining the necessary data to validate
the model, which if obtained tend to be noisy. Sterman (2000) posits that that traditional
causal models are based on correlations, which present relationships based on past
behaviors of a system and do not represent the structure of a system. As a consequence,
160
traditional causal models do not show how the interactions occur and how a change in
any element will affect future behaviors in the system. Traditional causal or correlational
models are based on the ceteris paribus clause (Bal and Nijkamp, 2001). Analyses are
made based on the variation of a limited amount of variables while all the others remain
constant. Since organizations are part of a complex evolving world, other variables not
considered might affect the existence of the system and the validity of observed
behaviors may vary given slight changes in conditions.
Which is the best model to represent the intricacies of a social system? The best
model will be a function of the methodology selected and the usefulness of the model for
the theorist or practitioners. The next section explains about the usefulness concept and
present an overview of modeling methodologies oriented towards modeling
organizations.
2.4.3 Modeling Methodologies
Vernadat (1996) defines a modeling methodology as:
“ A set of activities to be followed for creating one or more models of
something (defined by its universe of discourse} for the purpose of
representation, communication, analysis, design or synthesis, decision
making or control (p. 24).”
In addition, Vernadat (1996) explains that any modeling methodology is
characterized by:
- The definition or purpose of the model, that is, what is the objective of the model.
- The viewpoint of the model, in other words, the extent of the model, variables and
elements included and not included.
161
- The detailing level of the model, that is, the depth of the model or how detailed is the
system explained by the model.
Recall the definition of processes given by Giaglis (2001):
“A collection of decision models, each of which is identified by the type
of decision and contains a sequence of processing tasks. These tasks are
the smallest identifiable units of analysis, and their optimum arrangement
is the critical design variable determining the efficiency of the resulting
approach (p. 210). “
In this definition there are several elements that can be related to the modeling
concepts mentioned in the previous section. As seen, the decision variables for a model
of the business processes would be the best way they can be arranged across the
organization, with the objective of optimizing the outcomes from these processes.
Taylor and Karlin (1994) introduce the concept of usefulness as a criterion for
selecting the most appropriate model to develop. As they affirm, since there is not a best
model to represent a system, usefulness allows the existence of more than one model to
represent the same phenomenon, but each one with a different objective. While some
models accomplish the desired objectives by quantitatively modeling a certain behavior, a
different type of model may provide only general qualitative information about the
relationships among elements of a system and their relative importance. This model may
accomplish the same objectives but in a different way.
The most suitable modeling methodology is defined not only in terms of how elegant
or complex it is, but how useful. The criterion of usefulness defines the choices and
preferences of theorists and practitioners. The selection of the most suitable model
methodology will be a function of its capacity to fulfill the objectives that were defined at
162
the beginning of the modeling process. Finally, the modeling methodology will be a
function of the principles, methods or tools relevant to the selected model and how useful
the model is at representing the different aspects, components, relationships and
complexity of the system.
Giaglis (2001) affirms that because of the complex and dynamic nature of
organizations, it is necessary to select a modeling methodology that helps to understand
their behavior. He adds that modeling methodologies are supported by techniques that
provide diagramming tools for studying and analyzing the modeled system. Three
techniques for causal modeling are briefly explained below. These techniques are
considered for this research effort since they can be used to present a graphical model of
complex structures, processes and sequential decisions. The selected techniques are
Influence Diagrams, Petri nets and System Dynamics.
2.4.3.1 Influence Diagrams
Pioneered by Miller, Merkhofer, Howard and Rice in the mid 1970’s, influence
diagrams were developed as tool to communicate with computers about the structure of
decision problems intending to use the influence diagrams as a front end tool for decision
analysis computer systems (Shachter, 1986). Influence diagrams were developed in order
to automate the modeling of complex decision problems involving uncertainty and
incomplete information (Agogino, 1999).
An influence diagram can be defined as an acyclic directed graph designed to solve
Bayesian decision problems (López, 1994). It is a graphical representation of the
interrelationships between the variables involved in the problem consisting of a series of
163
x y
Fig. 2.6 Interpretation of influences. From Agogino (1999)
sequential decisions. It visually reveals the flow of information, influences and the
overall structure of the problem (Agogino, 1999).
The graph corresponding to an influence diagram is composed of three types of
nodes: uncertainty or probability nodes represented as circles, decision or control nodes
represented as rectangles and value nodes represented by a diamond-shaped node
(Shachter, 1986). Uncertainty nodes are associated with random variables, decision nodes
are associated with actions and value nodes are associated with the criterion to choose
decisions (López, 1994).
Consider the elementary graph shown in figure 2.6. The circular nodes represent two
state variables x and y. The arc that connects the two nodes can be seen as the possible
existence of a conditional influence between the two variables (Agogino, 1999). A
variable x is said to influence a variable y if information about x tells something about y.
However, Agogino (1999) adds, this influence should not be interpreted as a causal
relationship between x and y.
The arcs into the different nodes have different meanings. Arcs into random
variables or chance nodes indicate probabilistic dependency and do not represent
causality or time dependency. Arcs into decisions specify the information available at the
time of the decision. They indicate that the information must be available at the moment
164
of the decision and imply time precedence. Any uncertainty or decision preceding a
decision node needs to be resolved before the decision at the head of the arc is made
(Shachter, 1986).
Figure 2.7 shows examples of each of the different relationships that can be shown in
an influence diagram (Shachter, 1986). In case a) the value depends on the random
variable which depends itself upon a decision. In case b) the value depends on both the
random variable and the decision. Case c) is similar to b) but the random variable does
not depend on the decision. In case d) the random variable influences the decision and the
value. Finally, in case e) a situation where the random variable only influences the
decision is presented. In the last two cases, informational arcs are presented. These arcs
go into a decision node and indicate that the necessary information must be available at
the time of the decision.
Shachter (1986) and Agogino (1999) present information on the conceptual
foundations, methodology and use of influence diagrams. Examples of their application
in decision sciences can be found in López (1994), Crowe and Rolfes (1998), Agogino
(1999), Bielza, et al. (1999), and Rathi (1999) among others.
a) b)
c)d)
e)
Fig. 2.7 Interpretation of the arcs. Adapted from Shachter (1986)
165
Since influences diagrams are acyclic directed graphs; cycles are not permitted.
Cycles do not represent any expansion of the probability distribution of the variables
involved in the problem representation (Agogino, 1999). Cycles might imply that the
decision maker can make inferences about a decision that has not been made or might
violate the assumption of time precedence (Shachter, 1986). In addition, arcs do not
necessarily present causality but show some type of dependency or influence between the
variables. For the previous reasons it is possible to affirm that influence diagrams,
although an important and useful tool for Bayesian decision making processes, are not
suited to represent the intricate relationships and causalities that are present in a complex
social system.
2.4.3.2 Petri Nets
Petri Nets are mathematical/graphical representations of dynamic systems (Giaglis,
2001, Odrey, et al., 2001). They were named after Carl A. Petri who created a
mathematical tool expressed as a net for study of communication with robots in 1962
(Zhou and Venkatesh, 1999). Petri nets can be used to study the qualitative and
quantitative performance of complex systems with extensive internal dependencies
(Kammath, 1994, Zhou and Venkatesh, 1999 ).
Petri nets are based on the concept that the state of the system completely describes
the current status of the entire system and any occurrence of an event may change the
current status of the entire system (Zhou and Venkatesh, 1999). The state of the system is
represented as a function of a transition diagram with two types of nodes named placed
and transitions joint by directed arcs (Ben-Arieh and Carley, 1994.).
166
A formal definition of Petri nets can be found in Zhou and Venkatesh, (1999). A Petri
net (PN) Z = (P, T, I, O, m) is a five tuple where:
- P = {p1, p2, …, pn}, n > 0, is a finite set of places pictured by circles.
- T = {t1, t2, …, ts}, s > 0, is a finite set of transitions pictured by bars, with
P T = , P T = .
- I: P T → N, is an input function that defines the set of directed arcs from P to T
where N = (0, 2, 3, …}.
- O: P T → N, is an output function that defines the set of directed arcs from T to P
where N = (0, 2, 3, …}.
- m: P → N, is a marking whose jth component represents the number of tokens in the
jth place. An initial marking is denoted by mo. Tokens are represented by dots in the
places.
The four tuple (P, T, I, O) is called a Petri net structure and defines a directed
graph structure. The introduction of tokens into places and their flow through
transitions enable the description and study of the behavior of the network
decomposed in discrete-time events.
The following example from Zhou and Venkatesh, (1999), shows a formal
description of a Petri net. In addition, Figure 2.8 shows the graphical representation of
this Petri net.
}0,1,1{m
01
10
00
)t,p(O,
10
01
01
)t,p(I
}tt{T
}pp,p{P
jiji
21
321
=
=
=
=
=
167
Ben-Arieh and Carley, (1994) explain that the inputs and outputs of a transition in
a Petri net are defined as a bag of places, allowing multiple occurrences of a particular
place as an input or output of the transition. Tokens allow the transitions to “fire”, which
represents the execution of activities. A transition can fire when all of its input places
have tokens. The firing process removes all the tokens from the input places and puts new
tokens in all the output places of the transition that fires. More detailed explanations of
the theoretical foundations and applications of Petri nets can be found in Jensen, (1996),
Zhou and Venkatesh, (1999), and Nielsen and Simpson (2000) among others.
Examples of Petri nets applications in organizational development and change are
shown in Odrey et al. (2001) who use a Generalized Stochastic Petri net to model the
control of re-entrant flow semiconductor wafer fabrication. Lu and Cai (2001) use Petri
·
·
1p 3p
2p
1t 2t
Fig. 2.8 Graphical representation of a Petri
net (From Zhou and Venkatesh, 1999)
168
net concepts to develop a Collaborative Design Process Petri net to manage the design
process conflict and to improve the collaborative design productivity based on a
sociotechnical design framework.
According to Giaglis (2001) the Petri net has received great attention as a tool for
modeling business processes. Petri nets have been expanded to include quantitative and
qualitative variables. However they have limited ability to represent reactive systems
(Ben-Arieh and Carley, 1994) and they are not explicit and manageable enough to
represent high level, complex business processes (Giaglis, 2001). Finally, a limitation in
the application to model complex organizational change is that while it is necessary to
picture the organization as a whole in order to understand the dynamic complexity of
organizations (Gupta, et al. 1999), Petri nets focus on local information rather than a
global view of the system under study (Zhou and Venkatesh, 1999).
2.4.3.3 System Dynamics
System dynamics has been identified as an approach to introduce a more dynamic
thinking approach to the fluctuating aspects of decision-making and organizational
change (Winch, 1998). Systems Dynamics helps in explaining the relationships existing
between the context of change and the behavior of the changing system (Morecroft, 1988,
Rasmussen and Mosekilde, 1988). While its application in modeling managerial policies
and as a management problem-solving tool has been widely reported, the potential for
testing and building organizational theories is still largely unexplored (Larsen and Lomi,
1999, Richardson, 1999).
169
Forrester (1961) defined system dynamics as “… the investigation of the
information-feedback characteristics of (managed) systems and the use of models for the
design of improved organizational form and guideline policies (p. 13)”. On the other
hand, Coyle (1996) defines system dynamics as “the branch of control theory that deals
with socio-economic systems, and that branch of Management Science which deals with
problems of controllability (p. 9).” Finally Gharajedaghi, (1999) defines system dynamics
as an approach to “understand the interaction of critical variables in the context of the
following: time, the totality and the interactive nature of the change with the system, and
the system’s environment (p. 120).” To achieve this understanding, the combination of
four different fields is necessary (Richardson, 1999, Gupta, et al. 1999): information-
feedback control theory, decision-making processes, information technology and
simulation. All together these fields help to explain the complexities that arise as part of
the daily execution of activities in the organization and the interactions that appear within
the different elements that are involved in any organizational change process (Sterman,
2000).
Using the concepts and ideas originally developed by Forrester (1961), it is
possible to show how the system functions using a simple diagram, delineating
information, activities and decision flow within the organization, and their influence on
the different components integrated in the system. At the qualitative level of analysis,
systems dynamics provides a vehicle for structuring a concept that is otherwise too
complex to analyze (Dangerfield, 1999, Richardson, 1999).
As explained by Giaglis (2001) system dynamics models are based on cause and
effect diagrams called Causal Loop Diagrams. They have the purpose of showing in an
170
explicit manner mental models about system structures and strategies. Giaglis (2001)
adds that the structure of the system implies the information feedback and the
relationships existing within the feedback, the decision-making elements and outcomes.
The information contained in the following paragraphs has been summarized from
Sterman (2000) who presents a detailed analysis on the foundations, methodologies and
tools that comprise system dynamics. He affirms that causal loop diagrams are an
important tool for representing the feedback structure of systems because they allow
extraction and capturing of mental models of organizations, explaining the feedbacks that
might cause problems and helping to expose the possible cause of dynamicity in a
system.
As shown in figure 2.9, a causal loop diagram consists of variables connected by
arrows representing the causal influences among the variables. These causal links can be
either positive or reinforcing, and negative or balancing links. The direction of the
causality is called the polarity of the loop and indicates how the dependent variable
changes when the independent variable changes.
Fig. 2.9 An example of a causal loop diagram. Influential factors in
performance.
Motivation Results Frustration
Division of labor
Management and
Leadership
+
+ -
-+ +
Positive or Reinforcing Loop
Negative or Balancing Loop
171
Figure 2.10 shows the concepts of links and causality among variables. A positive
link means that if the cause increases (decreases) the effect should increase (decrease)
above (below) what it otherwise could have been. On the other hand, a negative link
means that if the cause increases (decreases) the effect should decrease (increase) below
(above) what it otherwise could have been.
The loop polarity is a function of the feedback effect on the different variables. If the
feedback effect reinforces the original change, then it is a positive loop; if - it opposes the
original change it is a negative loop. A positive loop does not mean a beneficial change
in one variable. It means that the type of causality is positive, causing the effect to
change in the same direction as the variation of the cause.
It is important to stress two aspects from the definition of linking and polarity: the
aspect that a variation in the cause should generate an effect over the entire model, and
the aspect of increasing (decreasing) above (below). The first aspect is concerned with
Symbol Interpretation Mathematics Example
X Y +
All else equal, if X
increases (decreases)
then Y increases
(decreases) above
(below) what it would
have been.
In case of accumulations,
X adds to Y
0X
Y
In case of
accumulations
o
o
t
t
t
Yds...)X(Y ++=
Effort Results
+
Net income
Earnings +
X Y
-
All else equal, if X
increases (decreases)
then Y decreases
(increases) below (above)
what it would have been.
In case of accumulations,
X subtracts from Y
0X
Y
In case of
accumulations
o
o
t
t
t
Yds...)X(Y ++−=
Frustration Results -
Losses Earnings -
Fig. 2.10 Definitions and examples of link polarity. From Sterman (2000)
172
the situation where more than one variable affects the output of the system. It is possible
that the other variables offset the effect of the cause under study. To avoid this possible
noise effect it is necessary to assume, at a certain point, that all the other variables remain
constant. The second aspect is concerned with the non-linear behavior of social systems.
An input will not necessarily produce the same type and amount of outputs at different
time intervals. The presence or absence of certain factors will affect the existing
relationships in the system, making it necessary to define, by feedbacks and control, the
variation of the different outputs once the causes have changed.
Causal loop diagrams, although well suited to represent relationships, causality
and feedbacks, cannot handle the non-linear behavior typical of complex systems. Non-
linearity on system dynamics models is manipulated by means of calls stocks, flows and
accumulations (Dutta and Roy, 2002, Sterman, 2000). Stocks are accumulations and
characterize the state of the system since they accumulate the difference between inputs
and outputs at a certain point of time. Figure 2.11 shows the diagramming notation for
stocks and flows.
Stock
Inflow outflow
Valve or flow regulator
Flow
Source or Sink - stocks
outside the model boundary
Stock
Key:
Fig. 2.11 Stock and flow diagramming notation From Sterman (2000)
173
Stocks accumulate or integrate their flows. In other words, if the net flow into the
stock can be defined as the rate of change of the stock, then the total accumulation at time
t of the stock can be defined by the following expression:
In this expression, Inflow(s) represents the value of the inflow at any time s between
the initial time to and the current time t. Equivalently, the rate of change of any stock at
any time t is given by the differential equation:
Stocks and flows contribute to system dynamics models since they characterize the
state of the system and provide the basis for actions; provide the system with inertia and
memory; are sources of delays; and create disequilibria by decoupling the flow rate.
Figure 2.12 shows a more complete vision of how system dynamics model a
complex system. The diagram combines causal loop diagrams and stocks and flows in
order to represent by means of a dynamic population model how food and birth rates
counterbalance to control population.
+−=t
to
o
)t(Stockds))s(Outflow)s(Inflow()t(Stock
)t(Outflow)t(Inflowdt
dStock−=
Population
Net Birth Rate+
-Food per capita
Food
+
Fractional birth
rate
+
+
R
B
Fig. 2.12 A population model showing the different elements of a
system dynamics model. From Sterman (2000)
174
Giaglis (2001) posits that system dynamics has several limitations, including the
fact that it places too much emphasis on feedback and control, which he contends may be
of limited importance in many practical situations of business modeling. He asserts that
these relationships are unable to cope with stochastic elements frequently found in real-
life business processes. Despite his position, it is precisely the use of feedbacks and
causal relationships that makes system dynamics appropriate to model organizational
change. System dynamics provides the possibility of mapping complex relationships that
evolve as change is implemented (Dutta and Roy, 2002, Sterman 2000, Lomi, 1999).
Causal loops aid in the understanding of these changing relationships and the effect that
change has on the system’s outcomes.
It is possible to find different sources that support the claim that system dynamics
is suitable for modeling complex organizational systems. Richardson (1999) reflects
about the future of system dynamics in different areas including health services and
education. Klabbers (2000) summarizes epistemological views of learning in the context
of system dynamics. Campbell (1998) models the process failure in a rapidly changing
high-tech organization. Finally Larsen and Lomi (1999) present an analysis of the
dynamics of the organizational inertia model for organizational change using system
dynamics. Other examples can be found in Rasmussen and Mosekilde (1988), Coyle,
(1996), Vennix, (1996), Dangerfield (1999), and Bauer, et al. (2000), among others.
System dynamics models have been criticized because of the lack of formal
validation methodologies (e. g., Wittenberg, 1992, Barlas, 1996, Larsen and Lomi, 1999,
Klabbers, 2000) since the extent to which the model is useful is more the concern of the
user than of the developer (Klabbers, 2000) thus models seem to be arbitrary for the
175
observer. Validation of a system dynamics model is concerned with two criteria
(Wittenberg, 1992, Larsen and Lomi, 1999). First of all, the model must generate
behaviors that do not significantly differ from that of the real system. Secondly, a model
can be said to explain the behavior of a system if it reflects the real causal relations of the
system. Finally, Klabbers (2000) affirms that validation of a system dynamics model is
more a function of the usefulness of the model and the purpose of it than of traditional
techniques and methodologies that are oriented towards the analysis of more traditional
correlational models. A more detailed discussion on the philosophy and fundaments of
system dynamics models can be found in Barlas and Carpenter (1990), Barlas (1996) and
Klabbers (2000) among others.
2.5 Enterprise Modeling
As seen previously in this document, organizations are composed of a series of
functions and processes that are performed by people and machines in a collaborative
manner in order to attain the objectives on which the organization is based. It is
necessary to understand the enterprise from both the functional and behavioral point of
view, that is, the processes and the actors of the processes (Vernadat, 1996).
The organization can be described using two approaches: from the point of view
of business processes and information flow (Giaglis, 2001). Describing the organization
from these two points requires the development of a special type of model that uses
information technology in order to optimize the knowledge of the organization (Kirikova,
2000). These types of models are known as enterprise models.
176
. Defined by Fox and Gruninger (1998), an enterprise model “is a computational
representation of the structures, activities, processes, information, resources, people,
behavior, goals and constraints of a business, government, or other enterprise (p. 109).”
Vernadat, (1996) adds that the enterprise model is a representation of the perception of
the organization. Enterprise models are aimed at representing the organization in terms of
it functions and its dynamic behavior (Lin, et al., 1999). The basis of the representation is
the model developed during a profound diagnosis of the organization (Kirikova, 2000)
that would help in understanding not only the elements the organization consists of, but
also how they are related.
An enterprise model can be made of several sub-models, among which are
process models, data models and organization models (Vernadat, 1996, Lin, et al. 1999,
Kirikova, 2000). Enterprise models can have different purposes depending on the
situation and environment under study (Kirikova, 2000): business analysis, new business
definition, and organizational knowledge management among other uses. Enterprise
models can range from organizational charts to flow complex information systems and
dynamic programs that interrelate the different activities, processes and flows of the
organization (Raczkowsky and Reithofer, 1998, Wortman, et al., 2000, Whitman and
Huff, 2001)
Enterprise models represent different levels of integration such as intercompany
integration, intracompany integration and value chain integration (Lin, 1999).
Intercompany integration represents the vertical integration of an organization with its
partners, suppliers and customers. Intracompany integration refers to the integration of
the processes and functions within the organization, and it is normally called horizontal
177
integration. Finally, value chain integration combines both intra and intercompany
integrations in terms of the organization’s mission, quality, customer satisfaction or some
other different factors.
An enterprise model can be studied from a system approach from three points of view
(Doumeingts, et al., 2000): functional, structural and dynamic. From the functional point
of view, the organization is decomposed in a series of functional activities interconnected
by a network. From the structural point of view, the organization is described in terms of
its different components and activities. Finally, from the dynamic point of view, the
organization can be decomposed in two related entities: a physical system that includes
the elements or functions that are dynamically related, and control systems that carry the
decisions and information needed to control and operate the physical system.
Figure 2.13 presents a graphical representation of the fundamentals of an
extended enterprise model. As seen, it integrates the different levels of the organization
with the different views, functional, structural and dynamic. This complete integration
allows the theorists and practitioners the complete understanding of the processes,
Enterprise level
control model
Business unit level
control model
Fig. 2.13 An extended enterprise model with the different views embedded. Adapted from Lin, et al., 1999, Doumeingts, et al., 2000 and Wortmann, et al. 2000
Operational level
physical model
178
relationships, links and outcomes of the organization based on the objectives and goals
previously established. Using the extended model permits the complete representation of
the intricacies of a complex and dynamic organization considering all the functional and
behavioral elements embedded in the enterprise.
Because the goal of this section is the introduction to the fundamental concepts of
an enterprise model, a description of the different enterprise modeling methodologies will
not be included. The reader can consult the existing literature to review the existing and
proposed methodologies (e.g. Vernadat, 1996, Rackzowski and Reithofer, 1998,
Cantamessa and Paolucci, 1998, and Doumeingts, et al., 2000).
2.6 Modeling Organizational Change
It is possible to describe organizational change as a series of coordinated efforts and
processes oriented to achieve a transformation in the organization. Moreover,
organizational change can be described as a reactive process (Ben-Arieh and Corley,
1994), since change is the result of the reaction to different input signals from both
internal and external sources. Organizational components are constantly active and every
input might cause a state change in the system.
Organizational change models can be described as guidelines to implement
organizational change and usually provide the recommended actions and variables to be
considered to successfully achieve organizational change. There is a great amount of
effort put into organizational change modeling. Much of the work found in the literature
focuses on the development of new conceptual or theoretical organizational change
models that present a global view of the process of organizational change (e. g. Lewin,
179
1951, Kelly and Amburgey, 1991, Filkenstein, 1992, Mayer and Schoorman, 1992, Burke
and Litwin, 1992, Amburgey, et al., 1993, Barnett and Carroll, 1995, Farias and Varma,
2000, Gordon, et al., 2001).
Lewin (1951) proposed a classical model that has been the foundation of most of the
organizational change models developed (Marshak, 1993, Armenakis and Bedeian, 1999,
Grover, et al., 1995). Known as the “Force Field” model, it provides a simple
representation and fundamental idea of the change process (Burke, 1992). The model
describes change as a three-stage process in the implementation of change: unfreeze,
change and refreeze. Burke (1992) explains that the unfreezing stage means confronting
the present social system and depicting the need for change. The change step includes a
movement or a series of actions or interventions oriented towards achieving the desired
change. Finally, the refreeze stage contains deliberate actions to ensure that the new state
of behavior remains permanent.
Lewin’s model (Lewin, 1951) considered that the organization under change is in
steady state or “quasi stationary equilibrium (p. 199)” by equal and opposing forces. But
as Burke and Trahant (2000) affirm, it is important to focus more on disequilibria than on
equilibrium, implying that change is not linear. Change in a social system is constant, but
cannot be described as a constant. Social systems are constantly evolving and the change
process must be defined and studied from different dimensions in order to understand it
(Pacale, et al., 2000).
Armenakis and Bedeian (1999) present a review of different models and theories
developed in the 1990’s. They divide the models into three areas: content, context and
process issues. Models dealing with content issues focus on the factors that are critical for
180
both successful and unsuccessful change efforts and their relationships with
organizational effectiveness. Models dealing with contextual issues normally describe
forces or conditions existing in an organization’s external and internal environments.
The third area of research includes models that deal with the process of change. These
models generally describe the actions and activities executed during an organizational
change effort.
Figure 2.14 illustrates the distinction between content and process of change (Barnett
and Carroll, 1995). The nodes represent two different states of the organization at any
two points in time. A and B can represent the different strategies used by the
organization, being A before and B after the change initiative, and r(A) and r(B) can be
described as the rate of failure of organizations with strategies A and B respectively.
When an organization changes, the content effect of change can be defined as r(B) – r(A).
A negative value indicates that the adoption of strategy B indicates a better likelihood of
success than strategy A. The process of change can be described by the function r(AB)
which represents the hazards associated with changing from A to B. The total effect of
change from strategy A to strategy B can be defined as r(B) – r(A) + r(AB). Even if the
hazard of change is substantial, if the change from A to B produces strong beneficial
effects, the content of change can offset the process of change.
)A(r )B(r
)AB(r
Fig. 2.14 The process and content of organizational change. From Barnett and Carrol, 1995
181
The previous statement presented by Barnett and Carroll (1995) is precisely what
Hammer and Champy (1993) described as the need of radical change and the dangers
associated with BPR. The results of the change effort offset the dangers of the process.
The important point here, as Barnett and Carroll (1995) affirm, is to measure the
outcomes of the change process and content in order to evaluate the organizational
change. Any change must be described in terms of outcomes variables that have to be
measurable at the organizational level. There may be a gap between organizational
strategies and the actions actually undertaken. In addition, the change effort could be
affected by the existing gap between the perception of the importance of performance
measures among users and process actors (Jiang, et al., 2000). Kueng (2000) proposes
that any performance measure system should not be focused on generic concepts such as
effectiveness, efficiency, quality, costs and timeliness. He adds that these concepts should
be measured from a stakeholders’ point of view. Relevant strategic measures have to be
introduced which can control and coordinate decisions during the change effort (Mayo
and Brown, 1999, Nørreklit, 2000).
Change is a dynamic process. A dynamic strategy is needed to increase the
adaptability of the organization to accomplish present and future changes. To understand
the dynamicity of the organization it is necessary to view it as a system and take a
strategic and holistic approach to manage organizational change in order to achieve the
desired outcomes (Ackerman, et al. 1999).
Morel and Ramanujam (1999) affirm that the dynamics that guide organizational
change are a mix of randomness and planned or unplanned reaction to internal and
182
external pressures. The organization will self-adjust up to a point where the organization
reaches a critical point and it is necessary to influence the adjusting process. Change will
be successful if it leads to an increase in performance. Figure 2.15 graphically explains
this concept. Changing the entire business is not an isolated process. It requires that a set
of competing processes be executed, normally at the same time in the organization, each
of them with different individual goals but all of them oriented towards the same
objective (Marshak, 1993, Dulton, et al., 2001). Organizational change becomes
continuous and will be motivated by previous experiences and results (Kelly and
Amburgey, 1991).
Special attention has to be paid to several critical success factors in order to
minimize the risk of failing on a radical change initiative. First of all it is necessary to
recognize the necessity of change and how profound the organization wants this change
to be. The change can be either at a core process level or at an organizational level,
Fig. 2.15 A conceptual view of the organizational change process
Transformational
VarialblesRevised Business
Feedback and control
Internal and organizational
boundaries
External and evironmental boundaries
Process
Tra
nsa
ctio
nal
var
iable
s
BPR
TQM
OD
183
affecting different units and areas of the organization and people, either participants,
stakeholders or both.
Secondly a complete definition of the processes involved in the change initiative
is necessary in order to analyze them and determine the elements that have to be
redesigned. It is necessary to define the appropriate measurements in order to assess the
performance of the redesigned processes in contrast with the old ones. It becomes
indispensable to communicate the necessity for change, and to use leaders who will
convince people to join the change effort and overcome resistance. Finally, it is necessary
to use a set of tools derived from BPR, OD and TQM to manage and control the
activities, ideas and outcomes of the radical change processes executed within the
organization.
As mentioned in previous sections, complex systems show a complex and chaotic
behavior since initial conditions may exert a significant impact in the final outcomes (Bal
and Nijkamp, 2001). Thus, inputs may affect the systems depending on the temporal or
environmental situations surrounding the boundaries of the system. On the other hand,
organizational change affects not only physical and financial structures but essentially
profoundly affects the many actors involved. Hence, since organizational change affects
all levels, structures and members of the organization (De Tombe, 2001), it is possible to
affirm that it shows the characteristics and behavior of complex systems since it is
composed of a set of competing processes that integrate different elements of the
organization. Thus, it is important to develop a model that not only includes the elements
that are involved in the change processes, but that integrates the dynamic behavior of
change, the context in which organizational change is developed, the processes involved
184
in the change effort, and the pertaining measures of organizational change (Zayas-Castro,
et al., 2002).
Hitherto, the reader has been exposed to a series of concepts and fundamentals of
organizational change and modeling methodologies. In spite of the large amount of
research and theories in organizational change, the literature presents a series of
contradictions with respect to the application of specific techniques for organizational
change and the results thereafter. It has been posited that it is necessary to model
organizational change from a more dynamic perspective, considering the context of
change, the internal and external characteristics of the change process and the
organization subject to the change effort. It is important to model the causal relationships
that are present before, during and after the change effort has been attempted.
2.7 Problem Statement and Objectives
The literature attempts to explain the elements that are necessary for an
organizational change initiative to be successful, and presents a series of models that
elucidate the relationships among the different variables involved during an
organizational change process and the influences that these variables might have on the
resulting objectives. Change can be defined as the existing need to be different, while
innovation might be seen as the actions directed toward accomplishing change. Much of
the reviwed literature uses the terms change and innovation interchangeably, prompting
the question of whether change generates innovation or vice versa.
However, the literature seems to fall short in attempting to explain how to model
these interrelationships and how to control the influences such that a positive result can
185
be obtained. Much of the work focuses on conceptual or theoretical studies supporting
new or existing change models (e. g. Lewin, 1951, Kelly and Amburgey, 1991,
Filkenstein, 1992, Mayer and Schoorman, 1992, Burke and Litwin, 1992, Amburgey, et
al., 1993, Barnett and Carroll, 1995, Farias and Varma, 2000, Gordon, et al., 2001).
Moreover, there is a significant amount of research attempting to test the validity of the
different relationships explained in various theoretical studies using either large data sets
or a large sample of different organizations, normally with 20 to 30% rate of return on the
instruments used to test the different propositions developed. Many publications present
specific experiences and how these experiences align with the proposed hypotheses and
the literature(e. g., Ettlie, et al., 1984, Damanpour, 1991,Grover, et al., 1995, Guimaraes,
1997, Grover, 1999, D’ Aunno, et al., 2000, Greve and Taylor, 2000, Staw and Epstein,
2000, Sørensen and Stuart, 2000). These studies present profound and extensive
statistical analysis based on correlational and structural relationships. The validity of the
results might be contradictory because traditional correlational models show relationships
over a certain period of time or at a specific time and do not present cyclical relationships
that create dynamic causalities in reality. This may develop the problem of relating
variables based on past behaviors of a system without introducing the actual dynamic
structure of the organization (Hartman, et al., 1998, Sterman, 2000, Sterman, 2001, Bal
and Nijkamp (2001).
Despite the amount of existing information, there is a need for more profound
studies in the area of organizational change exploring the contexts, content, and processes
involved in a change initiative (Aguinis, 1993, Burke, 1997, Larsson, et al., 2001,
Pettigrew, et al., 2001). Pettigrew, et al. (2001) posit that research in change processes
186
should include also the dynamic relationship between change processes and outcomes to
detect how organizational change context, processes and the pace of change affect
performance outcomes.
Change tends to be described as a discrete series of events that ends with the
accomplishment of the proposed intervention (Marshak, 1993, Dulton, el al., 2001). The
seminal work of Lewin (1951) is being used as the base for the different models
presented in the literature (Marshak, 1993, Armenakis and Bedeian, 1999, Grover, et al.,
1995). This model is discrete, as it describes the process of change as composed of three
main processes: unfreeze, move and refreeze. Change consists of a set of competing
processes with managers influencing them depending on the importance and priorities
defined by the different influencing elements within the organization (Marshak, 1993,
Dulton, et al., 2001).
Furthermore, Murgatroyd, et al. (1998) assert that traditional approaches in
change initiatives do not address the major gaps existing between top management
conceptualizations of what has to be done, and lower-level understanding of what is
actually needed and what can be achieved in order to successfully attain change. In view
of this situation, several authors (e. g. Cantamessa and Paolucci, 1998, Raczkowski and
Reithofer, 1998) suggest a bottom-up approach for enterprise modeling. The process is
an iterative activity that includes the definition of the goals and objectives, the boundaries
of the system, the definition of the functions, inputs and outputs and the definition of the
existing constraints, all together with the relationships and activities that link every
element together.
187
This research integrates knowledge on organizational change presented in the
literature into a more detailed conceptual model that can explain the intricacies of
adopting change and innovation in organizations using a systems thinking approach. The
proposed model will incorporate not only factors that are potential obstacles for change
and innovation, but also will introduce guidelines that can be applied to enhance the
opportunity of succeeding in implementing change and innovation. In addition, this
research attempts to develop a series of conceptual propositions that will be used as the
foundation of new research efforts in organizational change, combining concepts from
systems dynamics, management sciences and organizational behavior.
This research effort explores the following question: How to model organizational
change such that change context, processes and organizational outcomes can be
dynamically related.
In order to attain the final goal of this initiative, three main objectives are
proposed
a. To develop and explore a new model for organizational change called The
Influence Model for Organizational Change that dynamically links the content,
context and processes of change with the organizational outcomes during and
after the change initiatives have been conducted.
b. To conduct a case study with the objective of describing and explaining the
change processes that have been attempted at the Missouri Lottery and to use
data, information and conclusions to corroborate, reject or explore different
aspects that are linked to the different propositions on which IMOC is based.
188
c. To generate a series of assertions explaining the experiences and conclusions
found in the case study that may be extended, for future research, to other entities.
2.8 Scope of the Study
Figure 2.16 describes the scope of this research. The research is limited to developing
a conceptual model for organizational change using systems thinking methodologies as a
framework. It attempts to present a qualitative approach to organizational change
modeling, with the objective of exploring the gaps that have been presented in the
literature, trying to link operational elements of the organization, the strategies and
methodologies for radical change, with the human face of radical change (Ackerman, et
al., 1999).
Description of the
problem
Theories, hypotheses,
assumptions,
experiences,
intuition
Definition, concepts
and
phenomena
Causal modelPerceived change in
transformational
variables
Expected change in
transformationalvariables
Perceived change in
transactional variables
Employee's
perceptions
Employee'sexpectations
Management's
perceptions
Management's
expectations
Organizational
outcomes
Need for change
Innovation and
Change forces
+
+
+
+
+
Expected change in
transactional variables
+
+
+
+
+
+
+
+
Difference between
perception and
expectation in
management
Difference between
perception and
expectation in
employees
Difference betweenemployees and
managementperception and
expectation
+
+
+
-
-
-
-
Semantic Modelorganizational
outcomes
change in performance
measures
managerial
decisions
organizational
processes
-
+
+
+
organizational
change process
need forchange
chanage andinnovation
forces
+
-
+
-
Multidisciplinary
knowledge
Case study
Model construction and
revisions
Perform empirical
direct structure testPerform theoretical
direct structure test
Theoretical
study Qualitative
study
Model construction and validation
Fig. 2.16 Scope of the research
189
The model investigates the conceptualization of change in organizations that
present policy resistance characteristics (Larsen and Lomi, 1999, Sterman, 2000), that is,
situations where decisions are delayed by actions from people. Although the scope of the
project was limited by the amount of information provided by the case study, it is
important to realize the necessity of a qualitative analysis of a complex system in order to
understand the complex relationships that are present in a changing system. This
understanding defines the framework for a more profound research initiative in which it
would be possible to determine more detailed quantitative relations that can contribute to
the decision process in organizations (Senge and Sterman, 1992, Van Dijkum, 2001).
Within the context of this research, organizational change is defined as “any
deliberate attempt to modify the functioning of the total organization, or one of its major
components, in order to improve effectiveness (McAfee and Champagne, 1987, p. 451).”
Innovation is viewed as the adoption of technologies, administrative systems, ideas or
procedures that will modify everyday transactions (Edwards, 2000, Gopalakrishman and
Damanpour, 2000).
Because a case study is a main component of this research initiative, the effort is
delimited by the boundaries of the study (Creswell, 1998), which are defined in this case
as the Missouri Lottery. The case study was comprised of two elements: a description of
the activities performed at the Missouri Lottery aiming to generate organizational change,
and an analysis of the situations and experiences presented during the execution of the
different programs intended to generate this change. Throughout the case study different
change programs and strategies attempted were analyzed without concentrating on a
specific activity or result. This information was used to test the Influence Model for
190
Organizational Change. Since the study will was conducted only at the Missouri Lottery,
the amount of information explored and studied presented a limitation to the statistical
analysis and conclusions. Thus, the data and experiences surveyed limited the analysis to
the scope of the organization, and no generalization to other organizations was made.
191
Chapter 3
Methodology
3.1 Introduction
As mentioned in the previous chapters of this document, one of the main
objectives of this research was to propose a model that will help organizations implement
change initiatives with an increased likelihood of success. To achieve these goals it was
necessary to define a methodology. The method selected was a function of the goals of
the research and how they are to be reached (Howard, 1985).
Because systems modeling through systems dynamics focuses the modeling
process on the whole system (Garajedaghi, 1999), and it is based on synthesizing separate
perceptions into a coherent whole, systems dynamics modeling suggests the use of a
multidisciplinary approach to identify and structure the different relationships involved in
a complex system. Thus, it was necessary to apply a methodology that allowed the
analysis of the real systems as a whole, searching for the different variables, their
relationships, causalities and influences within the system. Because a case study is a
qualitative methodology designed to analyze situations where phenomena are little
known (Yin, 1994), it seemed the most viable methodology to reach the goals of this
research effort. Through the case study, the relevant relationships that mimic the real
system were developed to such a degree that the model behaves similarly to the real
environment.
192
As part of the research effort, a case study in the Agency was conducted to obtain
information that could corroborate the propositions derived from the proposed Influence
Model for Organizational Change. Figure 3.1, repeated here from chapter 1, indicates the
approach used to complete this research effort. As depicted in figure3.1, after a review of
the literature and from previous experience, a series of propositions that support IMOC
were generated. These propositions were then analyzed by means of a case study, which
helped to both corroborate these propositions and to generate new propositions that are
the foundations of future research. The role of the case study is presented in figure 3.2
Fig. 3.1 The integrated research approach
IMOC
Literature Review
Ÿ Social and behavioral
sciences
Ÿ Systems Thinking
Ÿ Engineering and
Management Sciences
Case Study
Ÿ Surveys
Ÿ Interviews
Ÿ Archival data
Ÿ Observation
Propositions
Problem
Statement and
Objectives
Theory and conceptual
informationData gathering and organizational
diagnosis
Information from the
case study will help to
develop relationships in
the IMOC
Information from the case study will
help to confirm the propositions
Literature review will
help to develop the
study proposition
Previous
experience
Motivation
Literature review
helps to determine
main relationships in
IMOC
The Motivation of this
research effort is the first
step for defining the
problem and objectives
Both previous experiences
and the findings in the
literature are the
motivators of this
research effort
The literature review
allows the construction of
the problem statement and
the definition of research
objectives
193
Fig. 3.2 The Role of the Case Study as a Research Methodology
194
The case study, as a research tool allows the investigation to directly study,
analyze and draw conclusions about certain phenomena that may occur in a limited
environment. The next sections of this chapter present a summary of the rationale of the
case study as a qualitative research tool and the characteristics and uniqueness of the case
study proposed for this research effort.
3.2 The Rationale of the Case Study
A methodology that allows an integrated study of the different relationships and
actions generated during a complex and radical organizational change process is needed
in this research effort. Since the information needed to construct a system dynamics
model comes mainly from interviews and observation (Sterman, 2000) the use of a
qualitative approach is recommended to gather the necessary information to complete this
research effort. The following paragraphs attempt to summarize the fundamental
concepts and characteristics of the case study as an approach for the proposed qualitative
research paradigm.
3.2.1 The Qualitative Research Paradigm
Research methods are often classified as qualitative or quantitative methods, with
the most important difference being the manner by which the method treats data
(Brannen, 1992). As research methodology, qualitative methods are instruments that
enable the researcher to understand phenomena that are little known or that present
questions that are exploratory. They help to identify situations or to understand behaviors
or events that could be used to compare existing theories with the objective of validating
195
or modifying them in a specific environment or to develop completely new ones
(Remenyi, et al. 1998, Creswell, 1998, Morse and Field, 1995).
“A qualitative research is an inquiry process of understanding based on
distinct methodological traditions of inquiry that explore a social or human
problem. The researcher builds a complete, holistic picture, analyzes
words, reports detailed views of informants, and conducts the study in a
natural setting (Creswell, 1998, p. 18).”
Based on this definition, qualitative research needs a high degree of flexibility in
its design; allowing the researcher to observe the different settings of the environment in
which the project is immersed, without losing the sense of a holistic picture (Morse and
Field, 1995). Although some of the qualitative data may be quantified, the analysis itself
is generally qualitative (Remenyi, et al. 1998, Strauss and Corbin, 1990).
In contrast, quantitative methods isolate and define variables and their
relationships. These relationships are then tested using the data in order to accept or reject
hypotheses framed before the data was collected (Brannen, 1993). Quantitative methods
seek relationships between variables in order to explain causality and predict outcomes.
They are based on theories and hypotheses previously established and the relationships
between variables are tested using abundant numerical data and rigorous statistical
methods (Morse and Field, 1995).
Quantitative methods are based on the deduction of potential relationships based
on hypotheses generated from previous research and from intuitive knowledge of the
phenomena. Qualitative methods are based on the identification of patterns and
commonalities with the goal of deriving new knowledge. They identify variables to
generate theories (Morse and Field, 1995, Creswell, 1998).
196
Traditional quantitative research tries to identify and explain causality between
variables that provoke a phenomenon while qualitative inquiry attempts to explain and
interpret the phenomenon itself (Herda, 1999). To develop the dynamic relationships and
propositions framed in a systems dynamics model it is necessary to discover the
intricacies that exist in the real system. Sterman (2000) affirms that this task is
accomplished by conducting a series of interviews and conversations with people within
and outside the organization. This necessitates the adoption of qualitative research
methods as the best approach to complete this research effort.
3.2.2 The Case Study
The case study is considered one of the fundamentals tools of qualitative research
methods (Remenyi, et al. 1998, Creswell, 1998, Yin, 1994, Gummesson, 1991). Case
studies have been widely used in social sciences (Yin, 1994) and now are being used as a
research methodology in business and management (Remenyi, et al. 1998) and decision
sciences research (Clausen, et al., 2001) because they allow retention of a more holistic
and realistic perspective than traditional cross-sectional or longitudinal studies (Remenyi,
et al. 1998). In addition, the research approach in engineering management considers the
use of the case study because it is changing from the “traditional problem solving or
algorithmic flavor to empirical research on complex interactions of macro-level
organization of business functions and processes (Ahire and Devaraj, 2001, p. 319).”
197
3.2.2.1 The Design of a Case Study
Yin (1994) defines a case study as an “empirical inquiry that investigates a
contemporary phenomenon within its real-life context, especially when the boundaries
between phenomenon and context are not clearly evident (p. 13)”. Shaughnessy and
Zechmeister (1994) on the other hand define a case study as “an intensive description and
analysis of a single individual (p. 297)”. Whereas traditional research pays attention to
few variables that are controlled in order to analyze the outcomes from a phenomenon,
case studies are preferred when questions about “how” or “why” are asked when relevant
behaviors and variables cannot be controlled (Yin, 1994, Creswell, 1998). Its use is
necessary when the results of particular treatments or interventions need to be described
and explained (Shaughnessy and Zechmeister, 1994). Although qualitative methods are
normally oriented towards the definition of new theories or hypotheses, the case study
benefits from existing theoretical propositions to guide the development of the study,
especially the data collection and analysis (Remenyi, et al. 1998, Yin 1994).
Yin (1994) classifies case studies as exploratory, descriptive, and explanatory.
Exploratory studies explore situations where the outcomes from a real-life intervention
cannot be clearly defined. Descriptive studies try to describe interventions in real-life
settings and the results obtained. Finally, explanatory studies aim to explain causal links
resulting from complex interactions in real-life settings.
Yin (1994) and Remenyi (1998) define five elements common to any case study
design:
a. Study questions: questions expressed as “why” and “how” give clues about how
the case study is to be performed.
198
b. Study propositions: this component includes a set of propositions directed to some
particular aspect to be examined within the scope of the case study.
c. Unit of analysis: this component is related to the definition of the study and how
the initial research questions have been defined. The definition should not be
unique, allowing the study to be compared to or differentiated from similar
research.
d. Linking data to propositions: in this case, the data collected must be related to the
research questions and propositions. Because normally in a case study there are
more variables of interest than data points, multiple sources of evidence are
needed, where the data must converge to confirm or reject the related proposition.
This conversion is called triangulation. There are six sources of evidence that are
used in case studies (Yin, 1994, Remenyi, et al. 1998). Table 4.1 shows the
definition, examples, strengths and weakness of these sources.
e. Criteria for interpreting the findings: a logical consequence of the previous
element, it is necessary to define some measures that will help in interpreting the
information obtained from the study. These measures should address the ideas,
concepts, relationships and issues being studied.
3.2.2.2 Judging the Validity of a Case Study
It is possible to judge the quality of a case study through four tests, construct
validity, internal validity, external validity and reliability.
Validity and reliability of a case study are direct functions of the advantages and
disadvantages existing in this methodology. According to Shaughnessy and Zechmeister
199
(1994) among the main advantages of the case study is the possibility of challenging
theoretical assumptions generally accepted and being the source of new ideas or theories.
Among the main disadvantages of the case study is the possibility of bias in the
interpretation of the results since the researcher might have been participant and observer
at the same time (Gummesson, 1991).
In addition the researcher might find bias in the data collection created by either
the participants or by the role of the researcher. Finally, the generalization from studying
Source of
Evidence
Objective Strengths Weakness Examples
Documentation Are primarily used to
corroborate and augment
evidence from other
sources.
- Can be reviewed
repeatedly.
- Not created as a result of
the case study.
- Contain exact
information.
- Long span of time, wide
coverage of events
- Can be of low
retrievability.
- Reporting bias.
- Selective bias.
- Deliberately
blocked
Proposal, contracts,
accounts, personal
correspondence,
other corporate
material.
Archival
Records
Are normally highly
quantitative and are
produced for a specific
purpose and specific
audience.
- Same as in
documentation
- Precise and quantitative.
- Same as in
documentation
- Accessibility
Payroll records, old
correspondence,
accounting records,
service records, lists,
personal records,
maps, and charts.
Interviews Verbal reports that allow
the recognition of facts
- Targeted to the case
topic.
- Provide perceived causal
inference
- Bias due to
construction of
question.
- Response bias.
- Inaccuracies.
- Reflexivity
Open ended or
unstructured, focused
and structured
(including surveys)
Direct
Observations
Collects observed
evidence by visiting the
case site and observing
the environment,
relevant interactions and
behaviors.
- Covers events in real
time.
- Covers the context of the
event.
- Time consuming.
- Selectivity bias.
- Observation bias.
- Cost.
Observation of
location, behaviors,
dress code, corporate
culture.
Live, photo or video
observations.
Participant-
Observation
Is the participation of the
researcher in the daily
work of the organization
under study
- Same as for direct
observation.
- Insights of interpersonal
behaviors.
- Same as for direct
observations.
- Bias due to
researcher’s
manipulation.
Researcher as
consultant or
employee.
Physical
Artifacts
Collection of physical
and cultural artifacts to
study their use under
specific events and
circumstances
- Insights to cultural
elements.
- Insights to technical
operations.
- Selectivity.
- Availability
Technical
instruments, tools
and equipment, art
work, pictures, etc.
Table 3.1 Sources of evidence for a case study (Adapted from Remenyi et al., 1998, Yin, 1994)
200
a single individual is also a disadvantage in the case study. The bias in both data and
results may become a flaw in the validity of the case study, while the reliability can be
compromised from the generalization if there is not enough variability in the population
studied (Shaughnessy and Zechmeister, 1994).
Construct validity refers to the existence of the correct operational measures for
the propositions being studied. According to Remenyi et al., (1998) and Yin (1994), in
order to meet the test of construct validity it is necessary to identify the ideas, concepts,
relationships and issues to be studied. It is also necessary to demonstrate that the selected
criteria actually give a measure of the ideas, concepts, relationships and issues to be
studied. Finally, to guarantee construct validity it is necessary for the researchers to use
triangulation to verify the information, to establish a chain of evidence to show a logical
sequence of events and their relationships, and to make the draft of the case report to be
reviewed by key informants.
Internal validity can be defined as the inference that a particular result is caused
by a particular phenomenon, without having all the evidence. Having the necessary tools
to inspect the evidence and to relate it to the original propositions are tactics that would
help to increase internal validity. Yin (1994) mentions pattern-matching, explanation-
building and time-series analysis as data analysis tools used to create internal validity.
External validity deals with the generalization of the findings of the study for
which it is necessary to replicate the study in other organizations. Generalization is
possible only if the phenomenon exists in other settings (Aguinis, 1993, Remenyi, et al.,
1998). With respect to generalization Gummesson (1991) affirms that:
“It no longer seems so ‘obvious’ that a limited number of observations cannot be
used as a basis for generalization. Nor does it appear to be ‘obvious’ any
201
longer that properly devised statistical studies based on large numbers of
observations will lead to meaningful generalizations (p. 79)”.
This statement is gaining support and credibility in business and management
research where a large number of observations of a phenomenon are not necessary to
draw conclusions about the findings in a case study (Remenyi, et al., 1998). On the other
hand, pure quantitative descriptions may not be the best approach to understand the effect
of different phenomena since the lack of hard quantitative data is a characteristic of these
cases, and generalization is done more on the basis of phenomena description and
explaining than in terms of traditional quantitative analysis (Aguinis, 1993). Finally, as
Shaughnessy and Zechmeister (1994) affirm, “the ability to generalize from a single case
study depends on the degree of variability in the population from which the case study
was selected (p. 305).”
When the evidence found and the measures used are consistent and stable, the
study will be defined as reliable, which is especially important if the findings are going to
be extended to other situations (Remenyi, et al. 1998, Gummesson, 1991). Reliability can
be reached by means of a case protocol, which formalizes, standardizes and documents
the procedures used in the case study, and by developing a case study database, which
should contain the evidentiary data used to formulate the conclusions of the case study
(Yin, 1994).
Case studies do not serve to confirm existing knowledge by repetition of the
experiments (Bal and Nijkamp, 2001). Instead, they aim at generating new knowledge.
The ceteris paribus clause implies that only a subset of contextual variables is used in a
specific study. Since organizations are part of the complex evolving world, other
variables not considered in the study and that do not remain constant in the study might
202
affect the existence of this subset. Variables such as time, space, environment and human
preferences and ideas cannot be set constant during a study, hence the validity of
repetition is dubious. As an example, not every organization reacts in the same way to
environmental conditions. During any given crisis, it is possible to observe organizations
that successfully overcome critical moments and become leaders, while some leaders
cannot survive under critical and extreme conditions.
3.3 Case Study Elements
Yin (1994) affirms that before developing a case study, a series of basic elements
has to be defined. Before detailing the main elements of the case study at the Agency it is
important to recall that within the context of this study, organizational change was
defined as “any deliberate attempt to modify the functioning of the total organization, or
one of its major components, in order to improve effectiveness (McAfee and Champagne,
1987, p. 451).” Innovation, on the other hand, was viewed as the adoption of
technologies, administrative systems, ideas or procedures that will modify everyday
transactions (Edwards, 2000, Gopalakrishman and Damanpour, 2000).
3.3.1 Study Questions
As stated previously in the present chapter, a series of questions was raised after
an 18-month research experience at the Agency. The following is a summary of the
experiences obtained during this project and the main motivation for this research:
- How do the results obtained at the Agency compare with those described in
the literature?
203
- Is it possible to generate new propositions that can explain the results obtained
in the Agency after the different initiatives that were attempted?
- Why did the project not have the expected results?
- Is there a missing link between organizational learning, organizational change
and innovation that makes it difficult to implement new processes?
- Is there a pattern in the results after a series of different organizational change
initiatives?
- What are the factors that were common during the different organizational
change initiatives attempted at the Agency?
- How must the Agency measure the results of the different change initiatives
attempted?
From the previous questions and the observations presented by Pettigrew, et al.
(2001) and Dulton (2001) among others, the case study was conducted with the goal of
exploring the following main research question:
How to model organizational change such that change context, processes and
organizational outcomes can be dynamically related.
Thus, the Influence Model for Organizational Change –IMOC- is developed to
address the previous research question. The case study was oriented to corroborate or to
redefine the different propositions on which the model is based, leaving the door open for
the possibility of more research in the area.
204
3.3.2 Study Propositions
With the main goal of devising a new model for organizational change, a series
of propositions was generated, as seen in figure 3.2, after observing how different change
projects were implemented at the Agency and the experience derived from these projects.
The research questions that motivated this study indicated that there are factors that
influence change that need to be studied with more detail. The following study
propositions incorporate these factors with the objective of examining them within the
scope of the proposed model for organizational change.
Proposition 1: Radical change motivated by innovation is more difficult to
implement than radical change motivated by strategic or environmental
reasons.
This is the main proposition on which this research is based. Radical change must
be motivated by more profound reasons than the simple adoption of innovation. Heller
(2000) showed, through a series of case studies, that for manufacturing enterprises, the
development of new products without considering the possibility of radical changes in the
structure or processes in the organization is likely to be a failure. According to the author,
it becomes extremely difficult to produce radical administrative and structural changes
without a strategic agenda that guides the attempts. On the other hand, the strategic
thinking of the radical changes needed before the introduction of new products, would
result in a positive experience when a new product is introduced.
205
This research extends this concept to a more general scope, with the premise that
radical change should come before any innovation. The adoption of innovation generates
the need for incremental change that would positively induce transactional change.
Under certain circumstances the innovation leads to a more profound type of change,
which requires transformational variables, as defined by Burke and Litwin (1992), to be
modified.
It is possible to argue that developing transformational change at the same time
that innovation is adopted is difficult. The model attempts to explain how to conduct
these activities in parallel in a self-adjusting organization to avoid having people partially
adopt the innovation while rejecting major changes that affect aspects beyond day-to-day
activities.
Proposition 2. Environmental and internal forces will motivate radical
change, while institutional forces will induce innovation.
Proposition 3. A need for change will induce a need for innovation.
Institutional forces induce the adoption of innovation in a search for prestige or
desire to look like similar organizations. In contrast radical change is motivated by more
profound reasons such as the need to survive or to cope with competition. Both
environmental and internal elements could force the organization to attempt radical
change that would provoke then the adoption of different innovations.
206
Even if the radical change is not totally accomplished, the model argues, the
innovation will be more easily adopted, and innertia would not impede partial or total
radical change in transformational variables because the internal structures of the
organization would be impregnated by the need for change.
Proposition 4. Innovation will generate a change in transactional variables.
Innovation, from the perspective of this research, consists of the adoption of new
elements that will make everyday tasks easier to achieve. Since transactional variables
are based on the current climate of work and are dicected toward modifying or changing
specific activities and processes (Burke and Litwin, 1992), the adoption of an innovation
will modify some or all of the transactional variables currently present at the
organization.
If transactional variables need to be modified to accommodate the adopted
innovation the results will be observed as an improvement in the related performance
outcomes of the organization if the innovation is related to internal organizational
processes or will depend on other factors, such as market or customer preferences, to be a
success.
207
Proposition 5. Radical change will generate change in transformational
variables.
Proposition 6. Transformational variables will change in a positive direction
even if the change initiative fails.
As defined by Burke and Litwin (1992) transformational variables affect the
culture of the organization, transforming it to a more holistic perspective. The model
proposes that the need for radical changes will conduce to a continuous, concurrent
process in which both transformational and transactional variables will change since the
need for innovation will appear, as established in proposition 3. This argument is contrary
to what is suggested by previous models derived from Lewin’s original work (Marshak,
1993, Dulton, el al., 2001), which suggests separate change processes for both
transformational and transactional variables.
Radical change will positively influence changes in transformational variables.
At the same time, the motivation for change in transactional variables will be induced,
not only as part of the requirements resulting from the changes in transformational
variables (Burke and Litwin, 1992), but also because radical change would induce the
adoption of innovations. Because radical change is induced by internal and strategic
factors, the need for change in transformational variables would be institutionalized by
the message from participants and the commitment from different members of the
organization (Armenakis, et al., 1999).
208
Proposition 7. The success of a radical change initiative will be negatively
influenced by the differences between employees’ perceptions and
expectations of the critical success variables influencing the change process.
Proposition 8. The success of a radical change initiative will be negatively
influenced by the difference between employees’ perceptions and
management expectations of the different critical success variables
influencing the change process.
Proposition 9. Groups of people with similar perceptions and expectations of
the critical success variables will positively influence radical change.
Proposition 10. Length of employees’ tenure time at the Agency will
positively influence the adoption of transactional change.
Proposition 11. Length of employees’ tenure at the Agency time will
negatively influence the adoption of transformational change.
The concept of perception and expectation as a measure of organizational
performance was originally adopted as a crucial element in the quality movement
measure of quality on service (Parasuraman, 1988, Zeithaml, 1988, Duffy, et al., 1998,
Lu, 1998). The first three propositions are derived from the fact that any type of radical
change initiative should be supported by the presence of a series of critical variables that
209
help in internalizing the need for change in the organization and by the people’s
perception of these variables (e.g Burke and Litwin, 1992, Armenakis, et al., 1999,
Larsson, et al., 2001). In addition, as transformational variables affect how the
organization accomplishes its goals (Burke and Litwin, 1992), it is important not only
that people’s perceptions and expectations be aligned in the same direction (Cook and
Russeau, 1988), but also with management’s perceptions and expectations (Gordon, et
al., 2001).
Finally, the last two propositions come from previous studies on how time affects
the adoption of organizational change (e. g., Damanpour, 1991, Amburgey, et al., 1993,
Staw and Epstein, 2000, Sørensen and Stuart, 2000). These studies conclude that old
organizations resist radical change while accepting change that is based on previous
experiences and affects more routine activities. Using these conclusions, this research
argues that the same can be concluded for people in the organization. People with longer
tenure time at the organization will accept change better if it is based on previous
experiences and does not radically change their environment, while people with shorter
time at the organization will accept more willingly radical change because they have not
absorbed prevailing organizational culture.
3.3.3 Unit of Study
The case study was conducted at the Agency. Since their introduction to the
United States in 1964, similar government-sponsored organizations have become a major
source of revenue (Miyazaki, et al., 1998). With sales in 37 states and the District of
Columbia of $33.3 billion and proceeds of $12.2 billion in 1998 (U. S., Bureau of the
210
Census, 1999), the services provided by state-sponsored organizations as the one studied
are the leading product produced and sold by state governments to the public (Miyazaki,
et al., 1998). As mentioned in the previous chapter, change is not exclusive for private
organizations. Governments, state and federal, are looking for efficiency in the
management of resources and competitiveness in terms of costs and services. Since the
primary goal of the Agency is to generate the maximum amount of revenue for the state
(Miyazaki et al., 1998), they are facing increasing pressures to innovate, to be more
efficient, more creative, more effective, and more responsive.
Agencies operate as a quasi-private organization, functioning in some situations
like private service companies, while in other situations operating as pure government
agencies. In some states agencies are viewed as corporations, while in others they are
defined as mainly a management office, outsourcing most of their operations. In still
other states, agencies operate basically as pure state organizations. This fact shows that
business processes differ from state to state, not always with the best business practices in
any one state (Crowe, et al., 2000, Jang, et al. 1999).
Given that state agencies, as the ones studied are a distinct type of public agency,
the revised literature does not present studies involving such a different and interesting
setting. Instead the literature emphasizes studies in a more traditional type of state
organization (Narismhan and Jayaram, 1998, Thong, et al.)
The Agency was created in 1984 when Missouri voters approved Amendment 5,
which modified the state constitution. The Agency’s vision is: “That our products and
promotions should be fun, innovative and provide players, retailers and employees with
unsurpassed opportunities of success. ” The Agency’s mission is defined as: ”To
211
maximize revenues for public education through the creation and sale of fun and
entertaining products with the highest levels of service, integrity and public
accountability.” Sales at the Agency began in January 1986, and in fiscal year 2000 they
reached $508 million, with a profit of near $154 million.
The headquarters of the Agency are located in Jefferson City with three regional
offices located in Springfield, Saint Louis and Kansas City. A five-member commission,
appointed by the Governor and approved by the State senate, governs the Agency, while
the executive director manages the daily operations of the agency. Its operations are
supported by nearly 180 employees, and it is composed of four divisions- Finance &
Administration, Marketing, Security, Communications - and the Executive Office, which
contains other activities not included in the four divisions, such as Research &
Development, Budgeting, Human Resources and Minorities Business Development
among others.
The Agency first attempted to accomplish important changes in the organization
in part as a result of an organizational diagnosis performed by an external consulting firm
during 1996. This diagnosis revealed the need for change in different areas and the need
for modernizing some processes and activities in order to improve the efficiency and
effectiveness of the organization. A series of projects has been attempted since then,
some with a great impact on the performance of the organization, others without
accomplishing the desired results. As part of this research effort an analysis of the
different projects was performed using the information collected from the case study.
The means of data collection and the methodology used to classify and analyze the data is
presented in the following sections.
212
3.3.4 Data Collection
Yin (1994) affirms that case studies rely on different sources of evidence. Six of
these sources were studied in previous sections. For this research effort, the necessary
data to evaluate the different propositions presented was collected by means of:
- Documentation: relevant information for this case study came from sources such as
strategic plans, direct documentation from the different organizational change
efforts previously attempted, current projects, organizational charts and
documentation from the researcher’s personal data base derived from the previous
experience at the Agency.
- Archival records: data from archival records consisted of data from the first year a
formal strategic plan was developed up to the current year. The data was located in
financial information, or strategic performance information, such as sales per
product, per region and per employee. In addition, relevant performance
information derived from the different projects was studied. Information related to
customer satisfaction, cycle times for certain important processes created or
modified by previous organizational change initiatives and other relevant
performance information was used to corroborate certain propositions presented in
this proposal.
- Interviews and surveys: Two types of interviews were conducted: structured and
semi-structured. The structured interview consisted of an instrument or survey that
was applied to 100% of the employees at the Agency. Using the total population in
213
the survey avoided complications related to the sampling procedures and possible
bias in the answers (Gummesson, 1991, Thompson and Seber, 1996). Of the 177
surveys distributed, 83 useful questionnaires were received with a response rate of
47%.
The survey, shown in the appendix, consisted of three sections. The
construction of this instrument followed a series of unstructured interviews with
Agency’s personnel, including the Executive Director and other top executives in
order to define different elements contained in the instrument, as well as to
determine how to name them and how to phrase the different questions according to
theAgency’s common language or semantics. In addition, the meetings helped to
determine the necessary logistics to apply and return the survey and the necessary
communication between the researcher and the participants. This process follows
the ideas presented by Isabella (1990) for a case study and data gathering processes.
The first section of the survey gathered demographic information necessary in the
study. In addition, it included questions regarding the type, purpose and result of
different change initiatives attempted in recent years at the Agency. Finally, it
presented a list of possible characteristics and motivators of change in order to
define what are the main similarities or differences of the different projects. The
second section of the questionnaire consisted of a series of questions that assessed
important critical change variables, as defined by Burke and Litwin (1992). The
instrument was adapted from a 150-item instrument designed by Burke and Litwin
as a diagnosis tool for their causal model for organizational change (Burke, 1994,
Burke et al., 1996, Armenakis and Bedeian, 1999). Anderson-Rudolf (1996) and
214
Falletta (1999) validated the Burke and Litwin instrument, with similar findings for
the different constructs presented. Both studies derived high measures of internal
consistency since both the Cronbach’s alpha and the item loading were higher than
0.7. Cronbach’s alpha is a measure of how well a set of items measures a construct
or dimension (Nunnally and Berstein, 1994, Rea and Parker, 1997). For this
measure, the higher the value, the higher the inter-item correlation. Factor analysis
is a statistical tool to reduce and group items in common factors or dimensions
(Shaughnessy and Zechmeister, 1994), with high loadings between related items
indicating a high significance of the item grouping (Lee, 1995). This section of the
questionnaire consisted of 66 questions that were adapted from a sample of the most
relevant items present in the original survey (Burke, 1994, Burke, et al., 1996), but
worded and structured in a manner that is consistent with the Agency culture and
metaphor. Most of the questions were positively worded, with the exception of
five of them, which were negatively worded (reverse order scaling) for control
purposes. Each question was rated on a 5-point Likert scale, for 1 being “To a very
small extent” and 5 being “To a great extent”. In addition, the questionnaire in this
section included the option of “I don’t know” if the respondent considered himself
not familiar with the question or the information asked and “Not Applicable” if the
informant considered that the question or information asked does not relate to the
individual’s personal condition. In addition, the respondent in this section had to
answer each question for three possible scenarios. The first scenario described
“Today” and it referred to the extent at which every situation presented is perceived
for the day the respondent answered the survey. The second scenario presented “A
215
year ago” which is the extent at which each situation is perceived, as it was a year
before the respondent answered the instrument. Finally, the “Preferred” scenario
represented the expected or preferred situation.
The third and final section of the instrument consisted of a series of open-ended
questions to obtain information that explained trends and low or high variability between
surveys in the results.
In addition, 21 semi-structured interviews were conducted. Participants from all
the divisions, at different managerial levels and different tenure times were interviewed
during a 3-week period. The interviews gave the respondents the opportunity of
expressing personal concern with respect to the overall change process at the Agency.
The answers to these questions gave a more centered perspective of the intricacies of the
organizational change efforts attempted at the Agency, and the expectations and
perceptions of the different members of the organization. Information from these
interviews helped to explain certain answers obtained from the questionnaires and to fill
some gaps necessary to study and conclude with respect to the different propositions.
3.3.5 Data Analysis
Sterman (2000) posits that the data needed to develop the dynamic relationships
implied in a system dynamics model should come from interviews and conversations
with people within the organization. The use of surveys, interviews and observation
together with quantitative data obtained from the organization’s archives and
documentation fostered the development of the different causal relationships and loops
relevant to the model.
216
Figure 3.3 shows how each of the different propositions is to be related with the
information gathered by the surveys. Since a qualitative methodological approach was
used to gather the necessary information, it is difficult to conduct traditional and
profound statistical analysis. As seen in Figure 3.3 statistical analyses such as Pearson’s
correlation matrices and mean comparison were used to analyze the different propositions
and to present the different variables and influences that are present in the change
environment. Furthermore, qualitative content analysis of the different open-ended
questions served also as a verification tool for some of the propositions.
Table 3.2 presents the structure of the questionnaire and the classification of items
by the corresponding dimension measured. Transactional variables were assessed in
questions 1 through 26 while questions 27 through 66 assessed transformational
variables. Questions 13, 14, 20,23, 27, 28 and 58 were evaluated in reverse order, and
they were used as a controlling strategy to detect bias or false trends in the
questionnaires.
Dimension Items
Section I
General information 1-9
Business processes 10
Change initiatives 11, 12
Section II
External environment 1 a, b, c, d, e, f, g
Mission and strategy 2 – 14
Leadership 15 – 18
Organizational culture 19 – 26
Structure 27 - 28
Management practices 29 – 40
Systems 41 a, b, d, d, e, f
Work climate 42 a, b, c, d, e, f
Job/skills match 43 – 49
Motivation 50 – 53
Individual needs and values 54 – 58
Performance measures 59 - 66
Table 3.2 Classification of items by dimension measured
217
Fig. 3.3 Verification Process
218
Total scores for section two were determined as the weighted average of the
individual scores discounting the N/A, Don’t Know answers. These answers did not
count on the scores but could be used for trend analysis if they presented a common
pattern among the participants. The number of questions used to assess a corresponding
variable determined the corresponding weight. This calculation was performed for both
transformational and transactional variables for each of the scenarios presented in the
survey. The internal consistency and reliability of the instrument was tested through a
Confirmatory Factor Analysis and by the use of the Cronbach’s alpha estimate as shown
in the following chapter.
The assumption of normality is important in order to perform quantitative
analyses using the mean as the population parameter. If the sample size, or the population
is large, the use of the central limit theorem justifies the use of the normal distribution as
the sample distribution. Even if a modest departure from the assumption of normality is
reported, the validity of the conclusions should not be compromised (Daniel, 1990). It is
possible to argue that if the response rate of the survey is large enough, the normality
assumption can be supported, and the use of traditional parametric statistical analysis can
be explored. Hereto, the mean will be used as a parameter of the population under study,
and for the analysis of the different propositions presented in the previous sections.
The expression used to determine the individual average for each set of variables
(transformational and transactional) is given by:
=
+−
=
+−
+−
=K
1k
k,Nok,A/Nk
)NN(n
1j
j,kk,Nok,A/Nk
i
)]NN(n[
x)]NN(n[
X
k,Nok,A/Nk
219
Where:
iX : Is the mean for variable i, for i = Transformational or Transactional
nk : Is the total number of items corresponding to dimension k for variable i.
NN/A,k : Total number of items with N/A scores in dimension k for variable i.
NNo,k : Total number of items with Don’t Know scores in dimension k for
variable i.
Xk,j : Score for item j in dimension k for all the items in this dimension.
The difference between means for a corresponding variable, given by
21 XXX −= , defines a measure of change. Comparing the corresponding means and
testing for a null hypothesis defined as Ho: 21 XX − , where 1 and 2 depict the different
scenarios defined in the survey, will determine if a significant change for the different
variables exists. X was correlated with the aggregate results for the different projects in
order to verify propositions 1 through 8, as indicated in figure 3.2.
Propositions 9 through 11 were verified using data from questions 1 through 10 of
the first section of the questionnaire. These questions defined the demographics of the
Agency. The information provided here was used to determine the trends and possible
grouping that will verify the propositions, as shown in figure 3.2. It is important to
consider the size effect of the results whenever a test of statistical significance is used
(Vacha-Haase, 2001). The use of ANOVA was explored to determine significant
differences among groups of respondents. A high collinearity resulted during the analysis
of some of the variables –as was expected since there is a great degree of collinearity
among the different critical variables -, which made difficult the clustering of groups. The
220
use of qualitative analysis was necessary in order to determine possible similarities
among groups of participants and the change in transformational and transactional
variables as assessed by this study in the cases where ANOVA was of no use.
3.4 Construction of the Model
DeTombe (2001) defines complex societal problems as real life problems that
present a dynamic behavior. They can be classified in different subgroups such as
complex social problems, complex technical policy problems and complex organization
problems. Organizational change affects not only physical and financial structures but
essentially profoundly affects the many actors involved in it. Hence, organizational
change can be viewed as a complex societal change since it affects all levels, structures
and members of the organization.
The author presents Compram as a methodology for handling complex societal
problems. Compram, which stands for COMplex societal PRoblems Analysis
Methodology, is a prescriptive framework to analyze, guide and predict complex societal
problems. The method indicates the necessary meta-steps that a multidisciplinary team
should follow to define, to describe and to solve complex problems. DeTombe (2001)
develops a seven-layer model that is the basic communication tool that helps actors with
different backgrounds and organizational levels to understand not only the problem but
the different facets and characteristics of the possible solutions. This approach is shown
in Figure 3.4.
Layer I of the Compram methodology consists of the motivation and problem
definition included in this document. Developing a formal model that describes not only
221
the content but also the process and context of change became the main objective of this
research effort. Layer II contains the definition of the concepts and theory that support
the necessity of a solution of the problem under analysis and the theoretical foundations
that will later support the proposed model.
In Layer III, DeTombe (2001) proposes that the relationships between the theories
and the phenomenon under study have to be described using natural language. It is at this
step that the Influence Model for Organizational Change –IMOC- is proposed as a
conceptual model that explains in a more detailed and holistic manner radical change in
organizations. Layer IV considers the different knowledge islands required to develop a
solution for the problem proposed. In this layer the definitions of the different
approaches combined to develop the model were explained.
The use of knowledge from systems thinking, social and behavioral sciences,
enterprise modeling and system dynamics is conjugated in this study to develop a three
tier model that is defined in layers V, VI and partially in layer VI since the proposed
model is a conceptual model that attempts to present a qualitative approach to
organizational change modeling, without profound quantitative simulation or
mathematical modeling at this step.
3.5 Validation of the Model
Barlas (1996) affirms that models can be defined from two points of view. The
positivist or traditional approach sees the model as an objective representation of a real
system. From this approach a model is correct or incorrect once it is compared with
empirical facts from reality. On the other hand, the phenomenologist or holistic approach
222
sees the model as one of many possible ways to describe a system. “No particular
representation is superior to others in any absolute sense… for every model carries in it
the modeler’s world view (Barlas, 1996. p. 187).”
Description of the problem
Theories, hypotheses,
assumptions, experiences,
intiuition
Definition, concepts and
phenomena
System dynamic simulation model
need for
changechange in
organizationaloutcomes
organizational
change processes
change in
transformational
variables
+
change in
transactional
variables
+
Resistance
to changebalance in
previous
experience
+
-change and
innovation forces
+
-
Causal modelPerceived change in
transformationalvariables
Expected change in
transformationalvariables
Perceived change in
transactional variables
Employee's
perceptions
Employee's
expectations
Management's
perceptions
Management'sexpectations
Organizationaloutcomes
Need for change
Innovation and
Change forces
+
+
+
+
+
Expected change in
transactional variables
+
+
+
+
+
+
+
+
Difference between
perception and
expectation in
management
Difference between
perception andexpectation in
employees
Difference betweenemployees and
managementperception and
expectation
+
+
+
-
-
-
-
Semantic Model
organizational
outcomes
change in performance
measures
managerial
decisions
organizational
processes
-
+
+
+
organizational
change process
need forchange
chanage andinnovation
forces
+
-
+
-
Knowledge islands
V. Semantic Model: Global physical level of the
Influence Model for Organizational Change
VI. Causal Model: Global control level of the
Influence Model for Organizational Change
VII. Simulation Model: Detailed physical level of the
Influence Model for Organizational Change
II. Definition, concepts and phenomena: Literature
Review
IV. Knowledge Islands: Literature Review, Methodology,
Case Study
III. Theories, hypotheses, assumptions, experience, and
intuition: Literature Review, Propositions, Case Study
I. Description of the problem: Motivation and
problem statement
Fig. 3.4 The Compram Methodology applied to the model
construction. Adapted from De Tombe, 2001
223
Vennix (1996) defines the validation of a model as the ”degree to which the base
model input: output relations map on those of the real system (p. 323)”. But, Vennix
(1996) adds, the demonstration that a model is fully correct is impossible because the
problems represented by the model are not independent of the observer or of other
people. Validation is best understood as “an ideal towards which we must strive if we are
to be at all faithful to the idea that management science aims to support action in the real
world (Vennix, 1996, p. 318)’.
IMOC is based on concepts of system dynamics underlying the relationships
inherent to an organizational change process. Klabbers (2000) affirms that when system
dynamics models are developed for practical uses such as policy development of social
systems, they are incomplete, relative and partly subjective. These characteristics make
model validation a process related to the validity of the model with respect to the purpose
of it (Taylor and Karlin, 1994).
As Vennix (1996) states, a model is a deliberate creation that includes
relationships that try to represent the real world, or at least part of it. These relationships
are supposed to be understood by the developers and users of the model. Thus, the
detailed internal structure of the model should be compared with that of its reference
system. Klabbers, (2000) posits that traditional validation, typical for data-driven
econometric models or traditional simulation models, is based on the predictability,
historical independence and deterministic nature of these problems. These procedures are
not suited for validating system dynamics models. Since they are descriptive models, the
224
validation would primarily cover the validity of the internal structures of the model and
then the validity of the system behaviors.
Since validation of IMOC should be based more on the usefulness of the model
rather than other aspects such as elegance, realism or reproducibility (Taylor and Karlin,
1994), it would be necessary to answer the following questions stated by Klabbers
(2000):
- Since the validity of a system dynamics model is defined by its adequacy with
respect to a purpose, who are the judges or owners of such purposes?
- Because the knowledge about the structure of a social system is not only a
matter of representing reality but understanding that the structures and
relationships within the social system evolve with time, who can be the judges
of such validity?
Klabbers (2000) adds that the answer to these questions is more a matter of a
profound study of social systems than a practical issue. The validation of a system
dynamics model should include more a qualitative approach than the use of traditional
quantitative techniques. The qualitative approach should be based on (Vennix, 1996,
Klabbers, 2000):
- The knowledge about the structure of the system,
- The knowledge about the dynamic characteristics of the system.
- The knowledge about the relationships between the structure and dynamics of
the system.
225
Barlas (1996), argues that there is not an established definition of model validity
and validation of system dynamics models. As a tentative solution for this problem the
author suggests a logical sequence of formal steps of model validation. To better
understand the ideas on system dynamics model validation, the following information is
taken from Barlas (1996).
As seen in figure 3.5, the tests are carried out in a logical sequence, and the
modeling process moves to the next step only if it is possible to establish confidence in
the current step. First of all, direct structure tests assess the validity of the model structure
by direct comparison with knowledge about real system structures.
The tests compare the model’s causal relationships with both the relationships that
characterize the real systems and with the structures and relationships proposed and
explained by the literature. Secondly, the structure-oriented behavior tests assess the
validity of the model by applying certain behavior patterns using simulation. These tests
involve observing the behavior of the system under extreme conditions and comparing
this behavior with the response of the system under the static conditions.
Finally, behavior pattern tests involve testing the system based on pattern
prediction rather than point or event prediction in order to see if the model shows the
corresponding behavior for long term policy implementation shown in the real system.
For the current research effort, the validation process was concentrated in the first
set of tests as shown in figure 3.5 by the shadowed area. The case study that was
conducted as part of this research effort had the main objective of finding the answer to
the challenges of validation. Observations through the questionnaire and interviews,
added to the previous experiences at the Agency generated adequate information to verify
226
the suitability or usefulness of the proposed model to represent the different aspects
involved during an organizational change effort. In conclusion, the proposed Influence
Model for Organizational Change –IMOC-, rather than being an attempt to develop a
complete representation of the organizational change process, was oriented towards the
generation of a debate about the processes involved in organizational change and the
possible results if the different variables and interdependencies could be observed and
studied.
Model construction and revisions
Perform structure-oriented behavior tests
Perform empirical direct
structure test
Perform theoretical direc structure
test
Perform behavior pattern test
Communicate results and implement
Fails
PassesPasses
Passes
Passes
Fails
Fails
Fails
Scope of the
research
Fig. 3.5 A logical formal procedure for dynamic systems
models validation. Form Barlas (1996).
227
Chapter 4
Results and Discussion
4.1 Introduction
This section includes the results and diagnosis of the case study conducted at the
Agency. These results are necessary to analyze and understand the different propositions
on which this study is based. The information summarized and presented in this chapter
will then be used to develop and explain the proposed Model for Organizational Change
in the next chapter.
This chapter is divided in different sections to discuss the characteristics of the
instruments used to gather data, the environmental situation of the case study subject and
participants and to better analyze the propositions presented in Chapter Three.
4.2 Internal Validity and Reliability of the Survey
For the purpose of gathering data for this research, a questionnaire was distributed
among the personnel at the Agency. The questionnaire is shown in Appendix I.
As mentioned in the previous chapter, the questionnaire was divided in two main
sections. The fist section included questions concerning geographical area, administrative
division, tenure at the Agency, time at current position, organizational level and
functions. In addition the section included information about the main organizational
projects executed at the Agency since 1994, the extent, depth, goals, and results.
228
Furthermore, the respondents had to answer questions regarding their roles in the
different projects and the stage of the project at which they were involved.
The second section consisted of 66 questions to measure the different constructs
or critical variables originally defined by Burke and Litwin (1992). The section used as
framework the Burke and Litwin 150-item instrument designed as a diagnosis tool for
their causal model for organizational change (Burke, 1994, Burke et al., 1996, Armenakis
and Bedeian, 1999). Anderson-Rudolf (1996) and Falletta (1999) validated the original
instrument with similar findings for the different constructs presented.
4.2.1 Internal Validity
The second section of the questionnaire was intended to asses the level of the
critical variables grouped in two main dimensions: Transformational and Transactional
Variables (Burke and Litwin, 1992), and three possible scenarios: “As today”, “A year
ago”, and “Preferred”. As Stevens (1996) affirms, this type of design using repeated
measures ensure robustness of the instrument since the respondents are the same and are
not affected by time, place or individual differences effects. The different items included
in this section were adapted form the original instrument based on the Agency’s culture
and metaphor. A Confirmatory Factor Analysis (CFA) was executed to verify the
validity and internal consistency of the instrument used in this research, which confirmed
that the adapted instrument was designed to assess these two different dimensions. CFA
uses the obtained data to verify, based on strong theoretical or empirical foundations, that
the instrument’s items are correlated to the different factors or dimensions measured
(Stevens, 1996). The data used for the CFA corresponded to the answers for the “As
229
2 4 6 8 10 12
0
1
2
3
4
5
Factor Number
Eig
enval
ue
Fig 4.1 Scree plot of the variables under analysis
Today” scenario of the 66 questions in section two. The reason of selecting these items
for the analysis is that since this is the current situation analyzed by the respondents, it is
possible to affirm that the majority of the participants would answer this scenario.
A method to determine the amount of factors that can be explained with the
variables used in the survey is the scree plot. The scree plot uses the eigenvalues of the
correlation matrix - the points or roots that express maximum common correlations
between factors and variables (Neter, et al., 1996, Loehlin, 1998) - versus the amount of
possible factors influencing the model. The scree plot graphs successive eigenvalues and
the user arrives at a decision based on the point at which the slope of the curve of
eigenvalues rapidly changes declining to an almost flat slope (Loehlin, 1998).
From the scree plot shown in figure 4.1 it is possible to see that effectively two
factors group most of the variability of the items. The behavior of eigenvalues does not
significantly change after the second factor. This indicates that most of the variation
among responses can be attributed to the two dimensions, transformational and
transactional variables, defined in the Burke and Litwin model (Burke and Litwin, 1992).
230
0.80.70.60.50.40.30.20.10.0
0.0
-0.2
-0.4
-0.6
-0.8
First Factor
Sec
on
d F
acto
r
Performance
Measures
needs
Individual
Motivation
Job skills
ClimateSytems
Management
Practices
Structure
Organizational
Culture
Leadership
Mission
ExternalEnvironment
Fig. 4.2 Loading plot for the different variables under study
Stevens (1996) defines the loading on each factor as the Pearson’s correlation
between the factors and the variables; thus, the higher the loading, the better the existing
correlation between the factor and the variable. An important step in factor analysis
includes the transformation of the correlation matrices used in the analysis in order to
minimize the amount of relations between variables (Loehlin, 1998). The varimax
rotation was used for the CFA since with this rotation each factor tends to load high in
few variables and very low on the rest, helping in the interpretation of the resulting
factors (Stevens, 1996).
Moreover, Stevens (1996) affirms that the interpretation of the loadings must be
carefully done, with larger samples giving a sounder analysis. The critical values of the
loadings must increase as the sample decreases. In this study, the amount of valid
responses is 72; thus, as he recommends, factors with a loading of approximately |0.6|
must be used.
231
Figure 4.2 shows a plot of the different factor loadings. As seen, the loadings
with values greater than |0.6| are not necessarily classified according to the original
classification defined by Burke and Litwin (1992). Thus, although the second section of
the survey measures the two dimensions – transformational and transactional - it seems
that the items do not group as mentioned by Burke and Litwin (1992). It is possible to
argue that this behavior is due to three basic considerations:
- Gorsuch (1983) indicated that for factor analysis to be effective, a minimum
of five valid cases per survey item is needed. Otherwise, the efficiency of the
method is not guaranteed. This is because covariance and correlation
coefficients tend to be greatly influenced by the presence of outliers if the
sample size is not large. Since the second section of the survey consisted of 66
items, a minimum of 330 surveys would be needed to accurately measure the
loading of the different factors.
- Furthermore, Loehlin (1998) affirms that factor analysis is highly restricted
since causal links among variables might result in erroneous interpretation of
the correlations. When a test over the 66 items was performed, the results
indicated that the correlation matrix was not positively definite. This result
led to belief in the existence of high multicollinearity between the 66 items,
which creates a problem because the determinant of the correlation matrix is
close to zero (Neter, et al., 1996). To solve this problem, averages of the
different items were used for the CFA. That is, instead of 66 independent
items, the aggregate for 12 different variables was used. Since the instrument
used was adapted from a tested instrument, it can be assumed that the
232
individual items are already grouped to assess the different variables included
in the study.
- The restriction previously mentioned implies additionally that the different
variables and factors explained by Burke and Litwin (1992) should be
independent and explained by simple correlations (Neter, 1996, Stevens,
1996). Figure 4.3 shows that the relationships between the different variables
and dimensions explained by Burke and Litwin (1992) are not simple.
Actually, they tend to be complex and cyclical, which is one of the main
limitations of factor analysis and one of the core problems assessed in this
research.
External
Environment
Performance
Motivation
Individual needs
and values
Tasks
requirements
and individual
skills
Climate
Systems and
Procedures
Management
Practices
Structure
Culture
Leadership
Mission and
Strategy
Fig. 4.3 Interrelationships among the critical variables of the Burke and Litwin
Model. Adapted from Burke and Litwin (1992), Anderson-Rudolf (1996), Falletta (11999)
Transactional
variables
Transformational
variables
233
4.2.2 Internal Reliability
Once the validity of the instrument, in terms of the measured constructs has been
assessed, it is necessary to determine if the instrument presents internal reliability, that is,
how accurately the questions or items that compose the instrument measure the behavior
that the research wants to assess. The coefficient alpha, commonly know as Cronbach’s
alpha estimate is often used as an index of the homogeneity of a set of items. The
coefficient alpha should not be lower than 0.70 for presuming the reliability of the
questionnaire (Nunnally and Berstein, 1994). For this analysis, the Cronbach’s alpha for
the different items was 0.8673, which can be considered high for this type of study.
To guarantee internal validity it is necessary to triangulate the responses to verify
the information (Yin, 1994). In addition to the Confirmatory Factor Analysis and the
Cronbach’s alpha estimate a series of interviews were conducted during a three-week
period. The interviews confirm some of the answers obtained and filled gaps present in
the survey. To conduct the interviews a sample of 14 employees was selected. The
sample included personnel from the different divisions and with different tenure time.
Additionally the four division directors, the controller, and director of planning were also
interviewed.
4.3 Analysis of the Study Population
The survey was sent to 100% of the employees at the Agency. Of the 177
questionnaires distributed, 84 were received and one of them was eliminated because the
information was not complete. The response rate was 47%, which is considered high for
234
this type of study since the average response rate is between 15%-30% (e. g., Bourque
and Fielder, 1995, Guimaraes, 1997, Grover, et al., 1995, Grover, 1999).
The surveys were distributed using internal mail in a package for each Agency
employee. To guarantee anonymity and confidentiality a white envelope addressed to the
Agency contact and a pre-stamped manila enveloped addressed to the researcher were
included in the package. If the person agreed to participate in the study he or she inserted
the consent letter in the white envelope while mailing the survey in the pre-stamped
envelope. There was no control or identification number that could link the survey with
the consent letter. An email from the Executive Director of the Agency was sent in
advance to all the employees informing them of this research and requesting the
participation of the employees in this research. A follow up email was sent two weeks
after the surveys were distributed to the employees.
Table 4.1 shows how the surveys were distributed to the different regions across
the State of Missouri, and the response rate from the different offices. As seen, 72% of
the respondents were from Headquarters. Furthermore, Headquarters also presented the
highest individual return among the different regions with 54% response rate.
The great majority of the responses are from the Jefferson City area, which
includes Headquarters and Vault, with a total of 79%. In addition, the individual response
rate of these individual offices was also the highest, 54 and 60% respectively. Therefore,
the analysis of the information presented in the surveys was be analyzed as aggregate, not
by individual regions, and conclusions drawn assuming a uniform behavior across the
different regions. Figure 4.4 graphically shows this information.
235
Vault ( 6, 7.2%)
K. C. (10, 12.0%)
Spring. ( 4, 4.8%)
St. Louis ( 3, 3.6%)
Headquarters
(60, 72.3%)
Fig. 4.4 Participants by region
Table 4.2 shows the responses by division. Figure 4.5 graphically depicts these
percentages. The divisions that have the greatest weight in the total responses are
Administration and Marketing since they are the largest divisions at the Agency, with
nearly 60% of all the employees. Nevertheless, Marketing presents the lowest rate of
response among the different divisions. One reason for the lower rate of response could
be that a majority of the employees in this division are field personnel who spent most of
their time on the road. In addition, it might be possible that since most of them do not
Table 4.1 Responses by region
Region Total Received % by
region
% by
total
Headquarters 112 60 54 72
Jefferson City (Vault) 10 6 60 7
Kansas City 19 10 53 12
Saint Louis 23 3 13 4
Springfield 13 4 31 5
Totals 177 83 47 100
236
Administration
(31, 37.3%)
(10, 12.0%)
Security
(26, 31.3%)
Marketing
( 8, 9.6%)
Executive. Office
( 8, 9.6%)
Communication
Fig. 4.5 Participants by Division
directly participate on any of the different projects –although being affected by them –
they considered that they did not have enough information or knowledge to fill out the
survey.
Figure 4.6 shows the participants by tenure at Agency and figure 4.7 shows the
participants by time working at the current position. In addition, tables 4.3, 4.4, and 4.5
show the frequencies and basic statistics for both variables: years at the Agency and years
at the current position.
Table 4.2 Responses by Division
Division Total
Received
% of
received Total FTE % of FTE
Administration 31 37 43 72
Communication 8 10 13 62
Executive Office 8 10 11 73
Marketing 26 31 86 30
Security 10 12 24 42
Totals 83 100 177 ---
237
0 10 20
0
10
20
Years at current position
Fre
quen
cy
Fig. 4.7 Years at the current position
0 5 10 15
0
10
20
30
Years at the Agency
Fre
quen
cy
Fig. 4.6 Participants by years at the Agency
Table 4.3 Frequency table: Years at the Agency and years at current position.
Years at
Agency Current position
N % N %
Less than 2 years 14 16.87 25 30.12
2 to 5 12 14.46 21 25.30
5 to 10 16 19.28 15 18.07
10 to 15 12 14.46 16 19.28
15 to 20 29 34.94 5 6.02
More than 20 years 0 0.00 1 1.20
All 83 100.00 83 100.00
238
These tables show that almost 50% of the participants have been at the Agency
for 10 or more years, 50% of them have been less than 5 years at the current position, and
25% of them in the same position for less than two years. The average working time of
the respondents is 10 years while the average time in the current position is over 6 years.
Table 4.7 indicates that employees in Administration show the longest time working at
the Agency and the longest time at the same position, while employees at both
Communications and Executive Office present the shortest time for both total working
time and time at the same position.
Table 4.5 presents with more detail the basic statistics for the population at the
Agency. Tenure related variables are rounded to the nearest half. For example, 0-years
category includes individuals that have been up to 6 months working at the Agency. In
addition, even though the Agency has been in operation for less than 17 years, due to the
round up procedure it appears as having being in operations for 17 years. Finally, one
respondent affirms that he has been working at the same position for near 25 years, while
has been working at the Agency only 17. After further analysis it was clear that the
respondent has been working in the same position for the State of Missouri for 25 years.
Table 4.4 Frequency table: Years at the Agency by division
Division Less than
2 years 2 to 5 5 to 10 10 to 15 10 to 15 15 to 20 All
Admin.
Commun.
Exec. Of
Mktng.
Secur.
All
6
2
2
3
1
14
3
0
3
4
2
12
3
5
0
5
3
16
5
1
1
4
1
12
5
1
1
4
1
12
14
0
2
10
3
29
31
8
8
26
10
83
239
Table 4.5 also shows the high variability of the responses, as depicted by standard
deviations of 4 or more years. It seems that while there are people that have been both
working at the Agency and being in the same position for long time, others have at the
Agency for few months. This apparently indicates a relatively high turnover among
people with less tenure time while a long permanence in the same position among those
with longer time at the Agency.
Finally, the hierarchical level of the participants was measured in terms of the
people supervised by the respondent. Several hierarchical levels were defined to facilitate
the analysis. As seen on table 4.6 and figure 4.8, the levels range from “none” to “More
than 20” employees under supervision. Table 4.6 shows that 60% of the participants do
not supervise employees, while 29% have between one and five. It is difficult to define
how high the level of the supervisor is because of the different size of the divisions. For
example, while Administration has over 50 employees, Communication has less than 15.
Table 4.5 Basic statistics: Years working and tenure time in years at the
state and at the Agency by division
Variable Division N Mean Median StDev Minimum Maximum
Years at the Agency Admin. 31 10.81 15.00 6.02 1 16
Commun. 8 7.25 7.50 4.06 1 13
Exec. Of 8 7.25 4.50 6.58 0 17
Mktng. 26 10.77 12.00 .5.49 1 16
Secur. 10 9.90 9.50 5.59 2 16
All 83 10.000 10.000 5.74 0 17
Years at current
position Admin. 31 7.48 5.00 5.74 1 16
Commun. 8 6.00 7.50 4.31 0 10
Exec. Of 8 4.06 2.50 4.54 0 11
Mktng. 26 6.65 5.00 4.89 0 15
Secur. 10 6.05 4.00 7.23 2 25
83 6.63 5.00 5.42 0 25
240
Two other characteristics of the population were assessed with the first section of
the questionnaire. These characteristics are more specific and assess the role and stage at
which the different respondents participated in a series of change and innovation projects
conducted at the Agency since 1994. Figure 4.9 shows that 81 of the 83 respondents
Table 4.6 Participants by supervisory level
Level N %
1 to 5 24 29
5 to 10 5 7
10 to 15 1 1
15 to 20 1 1
More than 20 1 1
None 50 60
NA 1 1
Totals 83 100
0
10
20
30
40
50
60
Admin. Commun. Exec. Of Mktng. Secur. All
Division
Fre
que
ncy
1 to 5 5 to 10 10 to 15 15 to 20 More than 20 None
Amount of people supervised by participant
Fig. 4.8 Supervisory level of participants by division
241
Execution
36%
Other
11%
Definition
12%
Planning
15%
Implementation
26%
Fig. 4.10 Participants by the stage of the project
Direct Participant(21, 25.9%)
Support Personnel(28, 34.6%)
Steering Committee(10, 12.3%)
Other (19, 23.5%)
Project Leader
( 3, 3.7%)
Fig. 4.9 Respondents by role in the different projects
participated in some degree in the different projects either as leaders, steering committee,
direct participant, support or other, which included from advising and consulting to
temporary clerical personnel, logistics or other non-direct support.
Additionally, as figure 4.10 shows, more than 50% of the respondents participated
either on the implementation or execution of the different projects, while the rest were
either at the definition or planning stages. Finally, 10% of the respondents considered
that they were final users or customers of the different projects. The number of
respondents for this section was 103. This indicates that some respondents considered
that they participated at more than one stage of the projects.
242
In conclusion, despite the fact that the results are aggregates from the different
geographical locations, it is possible to see that the sample of respondents covers a wide
variety of characteristics of the participants.
Consequently, it is possible to affirm that the sample is a good representation of
the Agency and that inferences about expected behaviors and situations could be done for
the Agency from this sample. This confirms the external validity of the instrument
(Hedrick, et al., 1993)
4.4 Analysis and Verification of the Study Propositions
This section analyzes the information to corroborate or reject the different
propositions that led to this research effort. Before analyzing the different propositions,
it was appropriate to verify if the conditions of both transactional and transformational
variables had changed from one year to another, and if there were significant differences
among the preferred vs. the current conditions for both dimensions.
To verify the statistical significance of the change between years, the mean for
both transactional and transformational variables was calculated for the following
conditions: “Today vs. A year ago” and “Preferred vs. Today”. A paired t-test was used
to verify if the differences between means were significant.
Table 4.7 presents the results of the test for the alternate hypotheses that there is
significant positive difference between the means of the assessed level for
transformational variables today vs. a year ago. The result is significant; there was a
positive improvement in the transformational variables in the current year vs. a year ago.
People at the Agency perceived that the extent to which the mission, vision, influence of
243
external environment and structure are influencing the organization has improved over
time.
Similarly, table 4.8 shows that there is a significant difference between the
expected level of transformational variables vs. the perceived level today. That is, even
though there was a significant improvement in the perceived levels of transformational
variables from a year ago with respect to the current year, people perceive that there is
still room for improvement.
Similar results were found after doing the corresponding paired t-test for
transactional variables for analogous scenarios. Tables 4.9 and 4.10 show the
corresponding paired t-test and the significance of the difference.
Table 4.7 Paired t-test for Transformational Variables Today vs. A year ago
Variable N Mean StDev SE Mean
Transf_t
Transf_a
Difference
77
77
77
2.7427
2.6528
0.0899
0.6327
0.6222
0.2210
0.0721
0.0709
0.0252
95% lower bound for mean difference: 0.0480
T-Test of mean difference = 0 (vs > 0): T-Value = 3.57 P-Value = 0.000
Table 4.8 Paired t-test for Transformational Variables Preferred vs. Today
Variable N Mean StDev SE Mean
Transf_p
Transf_t
Difference
73
73
73
3.966
2.770
1.196
1.326
0.681
1.303
0.155
0.080
0.153
95% lower bound for mean difference: 0.942
T-Test of mean difference = 0 (vs > 0): T-Value = 7.84 P-Value = 0.000
244
The previous results supported the definition of a new variable that measures the
total change of both transformational and transactional variables for the scenarios tested.
These variables are used for further analysis in the following sections.
Proposition 1. Radical change motivated by innovation is more difficult to
implement than radical change motivated by strategic or environmental
reasons.
To assess the validity of this proposition, it was necessary to compare different
aspects corresponding to both the first and second section of the questionnaire. The first
aspect to consider is the definition of radical change. Recalling the concepts presented in
Chapter 2, radical change is any deliberate change that alters or modifies the core
elements of the organization affecting either one or more of its major components or the
organization as a whole. As Hall, et al. (1993) mentioned, to define the radicalness of the
Table 4.10 Paired t-test for Transactional Variables Preferred vs. Today
Variables N Mean StDev
SE Mean
Trnst_p
Trnst_t
Difference
79
79
79
3.9257
2.9514
0.9743
0.8792
0.6775
0.7582
0.0989
0.0762
0.0853
95% lower bound for mean difference: 0.8323
T-Test of mean difference = 0 (vs > 0): T-Value = 11.42 P-Value = 0.000
Table 4.9 Paired t-test for Transactional Variables Today vs. a year ago
Variables N Mean StDev SE Mean
Trnst_t
Trnst_a
Difference
82
82
82
2.942
2.719
0.2238
0.681
0.917
0.7273
0.075
0.101
0.0803
95% lower bound for mean difference: 0.0902
T-Test of mean difference = 0 (vs > 0): T-Value = 2.79 P-Value = 0.003
245
change it is necessary to define both the extent and span of the change. The span of the
change is defined as the degree to which the change affects one or more elements of the
organization. The span of the different projects is assessed with question 12.b.1 for the
different projects. This question assesses how the respondents perceive the way change
and innovation projects have affected different levels of the organization: specific
functions, working unit, several working units, the division or the Agency. The
respondent answered the question using a scale going from specific functions (one) to the
entire Agency (five).
The extent of change is defined as the degree to which the core elements of the
organization have been affected. Question 12.d assesses the extent of change of the
different projects. The literature (e.g., Damampour, 1991, Grover, et al., 1995,
Guimaraes, 1997, Arora and Kumar, 2000, Amburguey et al., 1991) defines different
types of project extents according to their goal or radicalness. These definitions were
adapted to the survey to have a measure of the radicalness of the projects. The question
asks the participant to answer to which degree the individual projects fall into the
following categories: adoption of new working procedures, adoption of new working
systems, adoption of new technology, adoption of new functions and responsibilities, and
adoption of a new way of conducting business. Each category was assessed
independently on a scale of 1 to 5, with 1 being to no extent at all, and 5 to a very great
extent.
In addition, question 12.b.2 assesses the perception of the respondent of the goal
or radicalness of the process. This question is answered on a scale that ranges from
continuous to incremental to radical. Question 12.b.3 assesses the degree of success of
246
the different projects as perceived by the participants. The assessment scale goes from
total failure to total success. Both scales are coded similarly, using values from 1 to 5, 1
being used to code the minimum level and 5 the maximum. Scores used to test the
proposition are the average from the different projects and not single values of the
individual initiatives.
The perception of the influence of the different environmental and institutional
elements over the decision of change is assessed on questions 1.a to 1.f of the second
section of the questionnaire. This question individually assesses the influence of:
competitors, government, other lotteries, management, employees, players and retailers.
For the purpose of this research, it is considered that competitors, players and retailers are
environmental elements while government, lotteries, management and employees are
institutional elements.
Table 4.11 shows the perception of people about the span, goals and results of the
different projects. Near 50% of the respondents saw the different projects as attempting to
change more than their local activities, i. e., the projects are cross divisional. In contrast,
34% of the respondents considered the changes to be more as improving the current
situation, while 24% considered the projects as radically changing the organization.
Finally, 55% of the respondents valued the projects with a certain degree of success, 33%
considered them a total success. This indicates that people consider that the different
projects have influenced the daily activities of the Agency. It is worth noticing that for
all three variables, more than one third of the respondents did not know or could not
respond to the corresponding questions.
247
In addition, table 4.12 shows the extent to which the participants perceive the
influence of the different environmental and institutional elements over the decision for
change. Over 65% of the respondents considered that management was the principal
source of change at the Agency, while 60% consider that it is government, which is the
main motivator. Additionally, employees and the effect of other lotteries have an equal
weight of near 35%, but nearly one third of the respondents considered competitors,
players and retailers as the drivers. These answers led to the conclusion that institutional,
with more weight on government and management, rather than environmental forces, are
the main drivers of change at the Agency.
Figure 4.11 shows the perception of the participants concerning the extent of the
different projects. The percentages across the different projects’ extents are similar,
except for the adoption of new technology which is described as the least significant type
of project. It is important to notice that 30% of the respondents considered that the
different projects were oriented towards the definition of a new business.
Table 4.11 Perceptions of span, goals and results of the different projects
Level of Change Goal or radicalness Perceived success
N % N % N %
My functions 1 1.20 Continuous 28 33.73 Total Failure 7 8.43
My unit 1 1.20 Incremental 8 9.64 Some Success 20 24.10
Several units 11 13.25 Radical 20 24.10 Total Success 27 32.53
My division 23 27.71 NA 27 32.53 NA 29 34.94
The Agency 18 21.69 All 83 100 All 83 100
NA 29 34.94
All 83 100
248
Business (35, 30.2%)
Technology (11, 9.5%)
Systems (21, 18.1%)
Procedures (23, 19.8%)
Functions (26, 22.4%)
Note: the frequencies add up more than the total of surveys since
people answered in more than one category
Fig. 4.11 Global perception of the extent of the projects
Table 4.13 shows the perception of the participants of the success of the different
projects based on radicalness. Almost 90% of the respondents considered that projects
being classified as continuous improvement had either partial success to total success.
Table 4.12 Perceived extent for different environmental and institutional elements over the
decision for change
Competitors Government
Other
lotteries
Management Employees
Players
Retailers
N % N % N % N % N % N % N %
Not at all 10 12.05 4 4.82 2 2.41 1 1.20 2 2.41 17 20.48 5 6.02
Small 17 20.48 5 6.02 4 4.82 2 2.41 4 4.82 19 22.89 9 10.84
Some 18 21.69 13 15.66 35 42.17 14 16.87 35 42.17 21 25.30 35 42.17
Great 12 14.46 15 18.07 20 24.10 27 32.53 20 24.10 9 10.84 14 16.87
Very great 12 14.46 35 42.17 9 10.84 28 33.73 9 10.84 10 12.05 12 14.46
NA 14 16.87 11 13.25 13 15.66 11 13.25 13 15.66 7 8.43 8 9.64
All 83 100.00 83 100.00 83 100.00 83 100.00 83 100.00 83 100.00 83 100.00
249
According to table 4.13, almost 43% of the people participating in the study
considered projects with an incremental approach – a combination of continuous
improvement with radical or punctuated change- to be a complete failure. Despite this
tendency, 75% of the people considered that radical –or real change- projects were
successful. It is necessary to recall that only 8 people considered the projects to be
radical, while 20 or more considered the projects to be either continuous or radical. In
addition, 27 respondents – or about one third of he respondents - did not answer the
corresponding questions (i. e., N. A.).
Table 4.13 Perceived success score by perceived success and
project goal
Goal
Total
Failure
Some
Success
Total
Success NA All
Continuous 3 12 13 0 28
Mean 1.8333 3.3835 4.1495 -- 3.573
Median 2 3.4394 4 -- --
StDev 0.7638 0.2533 0.3526 -- 0.798
Incremental 3 3 0 2 8
Mean 1.5833 3.1548 -- -- 2.369
Median 1 2.875 -- -- --
StDev 1.0104 0.4846 -- -- 1.1149
Radical 1 5 14 0 20
Mean 2 3.2583 4.4452 -- 4.0263
Median 2 3.1667 4.4167 -- --
StDev -- 0.2893 0.4082 -- 0.7951
NA 0 0 0 27 27
Mean -- -- -- -- --
Median -- -- -- -- --
StDev -- -- -- -- --
All 7 20 27 29 83
Mean 1.75 3.3179 4.3028 -- 3.6071
Median -- -- -- -- --
StDev 0.75 0.2955 0.4042 -- 0.9533
Succe
ss
250
Table 4.14 shows the Pearson’s correlation between the goals or radicalness of the
projects and the different types of projects. The higher the score on goals or radicalness
the more radical the project is. These results indicate that people who saw the projects as
adopting a new way of doing business also defined the projects to be radical. Conversely,
people who defined the projects as adopting new functions and responsibilities also
considered the projects to be continuous improvement. Thus, it is possible to conclude
that while people considered the adoption of a new business as radical, adopting new
functions and responsibilities was considered more as continuous improvement.
Furthermore, people perceive that the relationship between the radicalness and
success of a change initiative is positive. Apparently respondents considered that the
more radical the change higher the possibility of success. The previous result contradicts
what the literature has been exposing. According to the literature, there is a greater
failure rate in radical change efforts (e.g., Hammer and Champy, 1993, Walston, et al.,
1999). A possible explanation of the results may be in the fact that most of the research
conducted in this area includes different sectors but only one type of human element,
basically either top level managers or individuals directly involved on the change process
(see table 2.2 for a sample of different studies on radical change). In contrast, the present
Table 4.14 Correlations between perceived results, goals and type of project
Results New
Procedures
New
Systems
New
Technology
New Functions
and
Responsibilities
New
Business
Goals 0.601 0.381 0.397 0.403 0.284 0.417
0.000 0.004 0.002 0.002 0.034 0.001
Results 0.438 0.474 0.333 0.327 0.401
0.001 0.000 0.333 0.016 0.003 Cell Contents: Pearson correlation
P-Value
251
research reaches different individuals within the organization, with a wider variety of
opinions. The results may indicate different perceptions of both the definition of radical
and the definition of success. This fact was confirmed by the interviews conducted after
the survey was applied. For certain people it is possible to say that a project radically
changed the perspectives or operations of the organization, while for others it was simply
a new procedure that simplified operations. Additionally, some of the interviewers
perceived the projects as being a total failure and others perceived the projects as being
successful. This aspect confirms the findings from different studies (e.g., Kennedy 1994,
Irani and Rausch, 2000) that considered communication within the organization as a
critical factor of success. This supports the importance of defining specific measures to
assess innovation and change effects in the organization (Johannessen, et al., 2001).
Finally, certain moderating factors (Damanpour, 1991, Bhatt, 2000) such as type of
organization, structure and leadership styles can influence the answers.
Table 4.15 shows the perception of people regarding the extent of the different
projects and their expected goals. Since only 8 respondents classified the projects as
incremental (table 4.13), table 4.15 shows only the total responses for “Some”, “Much”
and “Very Much” for projects classified as either “Radical” or “Continuous”, not
considering “Little” or “Not at all” for the different projects. As seen, about one third of
the respondents either defined the projects as continuous, radical or did not answer the
question.
252
Table 4.16 shows the results of a Two-way ANOVA to verify if there were
significant differences among the individual cells defined on table 4.15. No significant
differences were found between the groups “Goals” and “Project extent”. These results
indicate that the respondents do not have a clear view of how radical the different
projects are, which was confirmed by the interviews when respondents answered that
there was a lack of communication about the goals, objectives and definition of the
different projects.
A Pearson’s correlation analysis was performed to see if there was a statistically
significant correlation between environmental and institutional factors and the different
types of projects or span of the projects. Table 4.17 shows the correlation analysis
between the perceived effect of the environmental and institutional factors and the extent
Table 4.15 Frequency table: Project extent by goal
Project extent
New process New systems New technology
New functions
and
responsibilities
New business
Project goal N % N % N % N % N %
Continuous 22 37.29 20 35.10 10 22.73 20 35.10 23 38.33
Radical 17 28.81 17 29.80 14 31.82 17 29.80 17 28.34
NA 20 33.90 20 35.10 20 45.45 20 35.10 20 33.33
Total 59 100 57 100 44 100 57 100 60 100
Table 4. 16 Two-way ANOVA: Project goal by project extent
Source DF SS MS F P
Goal 2 34.533 17.267 2.349 0.158
Project extent 4 56.400 14.100 1.918 0.201
Error 8 58.800 7.350
Total 14 149.733
253
of the projects as perceived today by the respondents. Table 4.18 summarizes table 4.17
including only the environmental or institutional force and the projects that are
significantly correlated to these factors. As seen, with the exception of government and
retailers, all the other factors can be related to certain types of projects. These results lead
to the conclusion that, for the Agency, it is important to consider different factors when a
specific type of project is going to be initiated in order to improve the likelihood of
success. Additionally, it is perceived that employees also have a great impact on any of
the projects to be implemented.
In conclusion, the study revealed that despite the fact that the answers do not
clearly relate radicalness with the type of projects, there is a clear empirical relationship
between effect of environment and type of project and a partial theoretical confirmation
that environmental factors lead to radical change while institutional forces lead to
continuous change. Consequently, it is possible to affirm that the first proposition of this
research is partially supported at the Agency.
Proposition 2. Environmental and Internal forces will motivate radical
change, while Institutional forces will induce innovation.
To assess the validity of this proposition, it is important to recall the definitions of
radical change and innovation. While radical change attempts to drastically modify one
or more core elements of the organization, innovation is more oriented toward alteration
of daily activities.
254
Table 4.17 Correlations between extent of projects and perception of environmental and
institutional factors as today
Extent of the projects
Environmental
and institutional
factors
New
procedures
New
systems
New
technology
New Functions
and
Responsibilities
New
Business
Competitors
Government
Similar agencies
Management
Employees
Players
Retailers
0.224
0.100
0.015
0.912
0.311
0.021
0.323
0.014
0.446
0.000
0.248
0.060
0.212
0.107
0.217
0.111
-0.028
0.837
0.348
0.009
0.216
0.106
0.471
0.000
0.241
0.068
0.199
0.130
0.293
0.030
0.018
0.893
0.374
0.005
0.208
0.120
0.455
0.000
0.213
0.109
0.137
0.303
0.344
0.010
0.097
0.471
0.261
0.055
0.352
0.007
0.417
0.001
0.335
0.010
0.196
0.136
0.298
0.027
0.045
0.739
0.331
0.014
0.325
0.014
0.433
0.001
0.288
0.029
0.197
0.136
Cell Contents: Pearson correlation
P-Value
Table 4.18 Summary of the most significant relationships (p 0.05)
Change Force Project type Radicalness
Environmental
· Competitors New technology Radical
New functions and responsibilities Radical
New business Radical
· Similar agencies New procedures Continuous
New systems Continuous
New technologies Radical
New functions and responsibilities Radical
New business Radical
· Players New functions and responsibilities Radical
· Retailers No significant relationships
Institutional
· Government No significant relationships
· Management New procedures Continuous
New functions and responsibilities Radical
New business Radical
· Employees New procedures Continuous
New systems Continuous
New technology Radical
New functions and responsibilities Radical
New business Radical
255
Table 4.19 shows a paired t-test performed to verify if there was a significant
difference between today’s perception of the influence of the environmental and
institutional factors over the decision of change and the preferred degree of influence of
the same factors. The respondents consider that both competitors and management are
already influencing the decision to change and do not need to be altered. However, the
influence of government and other lotteries should be reduced, while the effect of
employees, players and retailers should increase in the decision of change.
The integration of the definitions of radical change and innovation, with the
perceived need for change on the different environmental elements shown in table 4.19,
and the facts described in the previous section, support the second proposition.
Continuous changes are more related to innovation and institutional forces motivate
them, while environmental forces motivate radical changes, as depicted in table 4.18.
Proposition 3. A need for change will induce a need for innovation.
Recalling the definitions of transformational and transactional variables given in
Chapter 2, transformational variables deal with core elements of the organization while
Table 4.19 t-test for perception of change on environmental and institutional
elements: Preferred vs. Today
Change on
Variable: N Mean StDev 95.0% CI T P
Competitors 61 0.180 1.42 ( -0.183, 0.544) 0.99 0.325
Government 67 -1.149 2.888 ( -1.854, -0.445) -3.26 0.002
Similar agencies 64 -0.375 0.951 ( -0.613, -0.137) -3.15 0.002
Management 68 -0.118 1.388 ( -0.454, 0.218) -0.70 0.487
Employees 70 1.200 1.258 ( 0.900, 1.500) 7.98 0.000
Players 69 0.638 1.098 ( 0.374, 0.901) 4.83 0.000
Retailers 70 0.671 1.293 ( 0.363, 0.980) 4.34 0.000
256
transactional variable deal with operational or peripheral elements. Therefore, these
variables are directly related to radical change and innovation.
Following the concepts supported by several authors (Parasuraman et al., 1988,
Larsson, et al., 2001) linking the difference between expectations and perceptions with
the success or failure of organizational activities and programs, the need of change and
innovation can be defined as the difference between the perceived and the expected levels
of transformational and transactional variables. According to this definition, the larger
and more positive the difference between the preferred and the current situation, the
larger the need of change to a preferred situation. This difference will be always greater
or equal to zero since the current situation will be at the best equal to the expected or
preferred condition (Parasuraman et al., 1988).
To analyze proposition 3, two new variables, “change in transformational
variables” and “change in transactional variables” were defined as the difference between
the preferred and the current condition. Table 4.20 shows the results of a t-test performed
to verify if the difference between the two scenarios is statistically significant. As seen,
the means for both variables are greater than zero, indicating that people at the Agency
consider that the current level (or extent at which transactional and transformational
variables are) can improve.
Table 4.20 t-test for the difference between transformational and transactional
variables today and preferred scenarios
Variable N Mean 95.0% CI T P
ChTrnsf_P_T
ChTransc_P_T
73
79
1.1960
0.9743
(0.8920, 1.5000)
(0.8045, 1.1441)
7.84
11.42
0.000
0.000
257
-3 -2 -1 0 1 2 3 4
-2
-1
0
1
2
3
Change in Trnsformational Variables - Preferred vs. Today
Ch
ange in
Tra
nsa
cti
on
al V
ari
able
s -
Pre
ferr
edv
s. T
od
ay
Fig. 4.12 Plot diagram of Change in Transformational vs. Change in
Transactional Variables – Today vs. Preferred scenarios
In a correlation analysis between both variables, it was found that the Pearson’s
correlation coefficient between them was 0.418, with significance of p = 0.000. Figure
4.12 depicts the behavior of change of transactional variables as a function of change in
transformational variables, showing a positive correlation between both variables, and so
indicating that the need to innovate is a function of the need for radical change, which
supports the proposition.
Proposition 4. Innovation will generate a change in transactional variables.
To test this proposition a Pearson’s correlation between goals or radicalness, type
of projects and change in transactional variables was performed. In addition, the
258
correlation analysis was done using two different scenarios, today vs. a year ago and
preferred vs. today.
The results on table 4.21 show that there are not significant correlations between
the variables. Despite these results, the interviews conducted indicate that people believe
that successful projects that involved small changes or changes in day-to-day activities
involved improvement in aspects like procedures, motivation and work climate. In
conclusion, although the data do not support the proposition, the interviews did. This
partially supports this proposition.
Proposition 5. Radical change will generate change in transformational
variables.
Similarly to proposition 4, this proposition was tested using Pearson’s correlations
between change in transformational variables, goals and type of projects. Table 4.21
Table 4.21 Pearson’s correlation between change in variables and goals and type of projects
Change in variables: Today vs. A
year ago
Change in variables: Preferred vs.
Today
Type of projects Transformational Transactional Transformational Transactional
Goal -0.053 -0.071 -0.1 0.169
0.703 0.603 0.491 0.217
New process -0.221 -0.101 -0.25 -0.068
0.085 0.433 0.061 0.598
New systems -0.214 -0.046 -0.264 -0.077
0.095 0.72 0.047 0.551
New technology -0.198 -0.03 -0.281 -0.057
0.124 0.818 0.035 0.663
New functions -0.272 -0.034 -0.206 -0.16
0.032 0.789 0.124 0.213
New business -0.206 -0.023 -0.286 -0.152
0.108 0.858 0.031 0.239 Cell Contents: Pearson correlation
P-Value
259
shows that the data does not support the proposition. Again, from the interviews people
perceived that the projects with more significance to the Agency improved conditions
such as strategies, organizational culture and, at least in part, leadership. The proposition
is partially supported.
Proposition 6. Transformational variables will change in a positive direction
even if the change initiative fails.
Tables 4.7 and 4.11 are used to test this proposition. Table 4.7 shows that people
consider that there have been improvements in transactional variables from a year ago to
today. In addition, table 4.11 shows that more than 50% of the people perceive that the
projects have been successfully implemented. Moreover, the interviews confirmed the
data from the surveys. It is not possible to relate change on transformational variables
with failure, concluding that proposition 6 is not supported.
Proposition 7. The success of a radical change initiative will be negatively
influenced by the differences between employees’ perceptions and
expectations of the critical success variables influencing the change process.
To verify this proposition a correlation analysis was performed between the
hierarchical level measured in terms of the amount of people supervised and results,
change in transformational and transactional variables as shown in table 22.
260
Due to the amount of missing data –30 out of 83 data points - and the high
collinearity among the variables the use of ANOVA to determine significant difference in
results by hierarchical level and change in variables was eliminated. Regression among
the same variables was performed –as shown in table 4.23.
Both tables indicate no significant relationship between the variables in the
proposition. As depicted in table 4.21 there are no significant correlations between the
different variables. Furthermore, the regression model indicates lack of significance of
the different terms of the model. The previous results indicate that there is no relationship
Table 4.22 Pearson’s correlation between amount of people
supervised and other variables
Amount of people
supervised
Results -0.043
0.760
Change in transformational
variables: Today vs. a Year ago
0.136
0.253
Change in transactional variables:
Today vs. a Year ago
-0.003
0.981
Cell Contents: Pearson correlation
P-Value
Table 4.23 Regression model: Results vs. hierarchical level and change in
transformational and transactional variables
Predictor Coef SE Coef T P
Constant 3.5912 0.1648 21.79 0.000
Supervisory level -0.00511 0.0202 -0.25 0.802
Change in transformational
variables
0.6125
0.7022
0.87
0.387
Change in transactional
variables
-0.5354 0.4780 -1.12 0.268
261
between the difference between the expectation and perception of the variables at the
Agency with the success of the projects. This lack of relationship contradicts what the
literature has exposed (e.g., Larsson, 2001). The large gap between perception and
expectation of the current situation should influence the results of a change or
administrative program.
From the interviews, an element that was found critical was communication.
People considered the lack of communication critical when implementing programs.
Employees believe that they do not have the opportunities or the empowerment to present
ideas or contribute to any change initiative. There is a gap between what they expect to
do and what they have to do. This gap affects the ability of the Agency to efficiently
accomplish the different programs attempted. Thus, despite the data not having the
statistical significance to support the proposition, the interviews help to partially support
it.
Proposition 8. The success of a radical change initiative will be negatively
influenced by the difference between employees’ perceptions and
management expectations of the different critical success variables
influencing the change process.
From tables 4.22 and 4.23 it is possible to conclude the same as in proposition 7.
The interviews again gave information that partially supported the proposition despite no
significant differences among hierarchical levels, success, and change in variables.
262
Proposition 9. Groups of people with similar perceptions and expectations of
the critical success variables will positively influence radical change.
Radical change is measured as the difference between transformational variables
under today’s conditions and those a year ago. Table 4.24 shows the results for ANOVA
for different groups of individuals at the Agency. Additionally, figure 4.13 shows various
scattered plots for change in transformational variables for different groups.
From table 4.24, with the exception of Years at Agency, there are no significant
differences in the perceived change of these variables within individuals grouped by
different demographic characteristics. Moreover, figure 4.13 does not show any clear
pattern or correlation between change in transformational variables and different groups
of people, even for category Years at Agency despite the relatively high significance
depicted on table 4.24. Subsequent analysis eliminating points that outlay for the different
groups confirmed the same trend. Finally, the interviews did not give any additional
Table 4.24 ANOVA of change in transformational variables –Today vs. Year ago-
by different demographic characteristics.
Source DF Seq
SS
Adj
SS
Adj
MS F P
Division
Location
Supervis
Years at the Agency
Years at current
Error
Total
4
4
5
4
5
31
53
3.3629
8.5119
1.6431
2.9915
5.8796
25.7767
48.1657
2.1041
3.9641
1.4629
7.6438
5.8796
25.7767
0.5260
0.9910
0.2926
1.9109
1.1759
0.8315
0.63
1.19
0.35
2.30
1.41
0.643
0.334
0.877
0.081
0.247
263
information that could help in supporting or rejecting the proposition. Therefore, it is
possible to conclude that proposition 9 is not supported by the data.
Proposition 10. Length of employees’ tenure at the Agency time will
positively influence the adoption of transactional change.
This proposition asserts that the longer an individual has been working at the
same place and/or at the same position, the greater the response to transactional change.
Table 4.25 shows the correlation between change in transformational and transactional
variables and both, the time at the Agency and the time in current position. Additionally,
figure 4.14 shows scattered plots with similar information. The facts provided in table
Adm.Mkt.
-0.1
0.5
H.Q St.
Luis11 33 4 12 6 15
Division
Chan
ge
in t
ransf
orm
atio
nal
var
iab
les:
to
day
vs.
yea
r ag
o
LocationPeople
supervised the AgencyYears at Years at current
position
Figure 4.13 Scattered plots of change in transformational variables vs. different
demographic characteristics
264
4.25 and figure 4.14 demonstrate that there is not a significant relationship between the
length of time people have been working at the Agency or at the current position and the
change in transactional variables.
-0.1
0.5
4 13
0.27
2.7
6 15
Tra
nsf
orm
ational
Agency
Years at the
Tra
nsa
ctional
Years at current position
Change in v
arible
s: today v
s. y
ear
ago
Figure 4.14 Scattered plots: change in transactional and transformational
variables vs. tenure time
Table 4.25 Pearson’s correlations between change in transformational and
transactional variables and tenure time
Change in
variables: today
vs. year ago
Years at
The
Agency
Years at
current
position
Transformational
variables
-0.006
0.961
0.085
0.474
Transactional
variables
0.160
0.160
0.022
0.847
Cell Contents: Pearson correlation
P-Value
265
On the other hand, the interviews presented a different scenario. Interviewees
agreed that the longer the time individuals have been working at the Agency, the more
willing they would be to adopt innovations that would simplify their daily work.
Consequently the proposition is partially supported.
Proposition 11. Length of employees’ tenure at the Agency time will
negatively influence the adoption of transformational change.
This proposition asserts that people’s resistance to accepting transformational
change is positively correlated to tenure time. Table 4.25 and figure 4.14 do not show
statistical significance to support this proposition. However, the interviews lead to the
conclusion that the participants consider that one of the main obstacles for radical change
at the Agency is precisely the length of time the majority of the employees have been
working at the Agency and at the same position. Interviewees consider that employees
with long tenure do not accept radical change due to the comfortable environment that
routine and tradition have created. In addition, they consider that there is a lack of
motivation for employees with less time at the Agency to present ideas for change since
“older” employees tend to reject them due to a lack of confidence in long term results and
the influence that these results may have on their positions. Finally, interviewees believe
that some employees feel that newcomers and their ideas may threaten both their job and
authority. These results lead to a partial support of proposition eleven.
4.5 Discussion
The objective of this chapter was to present the results of the case study conducted at the
Agency and to use the information gathered to assess the validity of the different
266
propositions that lead to this research. The first step was to determine the internal
consistency and reliability of the instrument used in the survey. Information from
previous strategic plans and organizational change projects, and interviews with top
executives helped with preparation of the instrument.
CFA partially confirmed the internal consistency of the instrument. The apparent
lack of consistency among the different variables and the two dimensions used in the
study –transformational and transactional variables- is due mainly to the high collinearity
existing between the variables. This phenomenon indicates cyclic relationships between
variables that affect the results of CFA. In addition, although the response rate is
relatively high – 47%- for this type of study, the absolute number of elements in the
respondents is low – 83- thus limiting the results of the CFA.
The internal reliability of the instrument was tested using the Cronbach’s alpha
estimate. The estimate for the instrument was 0.8673 which allows the presumption of
reliability since is greater than 0.7 (Nunnally and Berstein, 1994). To guarantee the
validity of the instrument, a series of interviews were carried out to triangulate the
responses. Semi-structured interviews with 21 different members of the organization,
including top executives, middle managers and employees from different divisions and
different tenure times were conducted. The information from the interviews was used for
validation purposes and to help in the analysis of the different propositions.
Table 4.26 summarizes the results for the different propositions. As seen, with
the exception of propositions 6 and 9 all the remaining propositions were either fully or
partially supported. For the propositions partially supported the information from the
interviews helped to assess the partial validity of the corresponding proposition.
267
Table 4.26 Summary table: Propositions validation
Proposition 1
Radical change motivated by innovation is more difficult to implement than
radical change motivated by strategic or environmental reasons
: Partially
supported
Proposition 2
Environmental and Internal forces will motivate radical change, while
Institutional forces will induce innovation.
: Supported
Proposition 3
A need for change will induce a need for innovation. : Supported
Proposition 4
Innovation will generate a change in transactional variables : Partially
supported
Proposition 5
Radical change will generate change in transformational variables. : Partially
supported
Proposition 6
Transformational variables will change in a positive direction even if the
change initiative fails.
: Not
supported
Proposition 7
The success of a radical change initiative will be negatively influenced by
the differences between employees’ perceptions and expectations of the
critical success variables influencing the change process
: Partially
supported
Proposition 8
The success of a radical change initiative will be negatively influenced by
the difference between employees’ perceptions and management
expectations of the different critical success variables influencing the
change process.
: Partially
supported
Proposition 9
Groups of people with similar perceptions and expectations of the critical
success variables will positively influence radical change.
: Not
supported
Proposition 10
Length of employees’ tenure time at the Agency will positively influence
the adoption of transactional change.
: Partially
supported
Proposition 11
Length of employees’ tenure time at the Agency will negatively influence
the adoption of transformational change. : Partially
supported
268
The support of propositions 1, 2 and 3 implies that to implement change it is
important to define if the change comes as a result of innovation or otherwise, and to
develop the need for change before implementing innovations that would profoundly
impact the way the organization conducts its daily business. For example, the Agency
implemented several projects called the 4C’s that resulted in a new way of performing
business. As a consequence of these changes new technology, procedures and structures
were adopted. Since the projects were implemented as part of a strategic initiative,
employees were ready to accept the new adoptions and to comply with the new ways of
conducting business. On the other hand, a BPR project, in which the researcher was
involved, recommended implementation approaches to doing business and structural
changes that required a more profound change than simply adopting new procedures.
The recommendations implied merging processes executed in different divisions. The
merger of processes and activities generated a power struggle between divisions that
resulted in the partial adoption of the recommendations. Divisions were willing to adopt
the new procedures only without losing control of some of the activities and employees
involved in them. Hence, the adoption of new procedures required changes in core
variables such as culture, leadership and organizational structure. This change was not
previously induced and the recommendations did not have the expected impact.
Propositions 4 and 5 are more related to the procedural component of
implementing change. It is important to initially determine the objectives and goals of
the change project to pay special attention to the variables that are directly influenced by
and at the same time directly influence change. Following the previous example, if the
269
BPR team had paid more attention to the transformational variables, in addition to the
transactional variables, it would have had a better impact on the implementation of the
recommendations.
The lack of support of proposition 6 gives the opportunity of studying with more
detail two aspects involved in this proposition: the definition of what is really new and
the definition of success for individuals in the organization. First, the effect of knowing
not only what is new, but also for whom it is new, is extremely important. Despite the
fact that top management must inspire change, it is necessary that people across the
organization be conscious of the need of change, the span of the process and its depth. It
can be argued that individuals in the organization will participate in the change process in
the degree they believe change will affect them. Employees will respond differently
depending on their understanding and perceptions of the change initiative. As different
authors affirm (e.g., Ettlie, 2000, Dent and Goldberg 1999) people resist what they do not
know or understand. If the change process is promoted from the top, but with the explicit
participation of all the levels within the organization, the likelihood of success should
increase. Second, it is important to define measures to assess change. The experience
with this research indicates that for the Agency success is measured in terms of sales and
revenues. If change is an integrated process throughout the organization, it is necessary
to develop performance measures that assess the different dimensions of change (Barnett
and Carroll, 1995, Kaplan and Norton, 1992): human, financial, customer satisfaction,
and others.
Despite the lack of support of proposition 9, propositions 7, 8 and 9 are directly
related with the concepts of perceptions and expectations and the coordination that should
270
exists between management’s objectives and people’s actions. From the experience at the
Agency, management should do what they say and employees should say what they do.
Employees see management improvising on actions and decisions even when top
executives affirm that planning and goals have been taken into account. On the other
hand, management considers that individuals do not do enough to achieve the proposed
goals of change. In addition, people see that their ideas and suggestions are not taken into
account because they believe that management does not have the confidence in their
work and performance to accept ideas that might fail because people “do not know
enough” to improve operations. Communication and assessing the individual’s
performance turn out to be critical elements for integration and coordination of activities,
goals and execution.
Supporting propositions 10 and 11 implies that tenure time affects change. From
the experiences obtained at the Agency it is possible to affirm that interviewees in general
agree that employees with longer time in the position have a better understanding of the
intricacies of their job and can be a great source of ideas and opinions. However, they
view time length as an impediment to accomplishing change. Employees with long tenure
time feel that routine becomes comfortable and do not want to profoundly modify their
activities and responsibilities. The case study also indicates that individuals with longer
time might feel threatened by new comers with new ideas, knowledge and willingness to
learn.
The next chapter of this document analyzes with more detail the above aspects,
from an integrated approach. The implications of the findings of this study can be
examined from three points of views: the theorist, the researcher and the practitioner. For
271
the theorist it confirms that organizational change is not a discrete activity isolated from
other aspects of the organization. Explaining organizational change implies integrating
different dimensions of change -environmental, operational, human- that interact
simultaneously during any organizational change process. These dimensions define a set
of variables or elements that are also interrelated at different levels so change becomes an
intricate network of activities and behaviors triggered by other interrelated networks of
activities and behaviors.
For the researcher, it becomes necessary to develop and use research
methodologies, tools and techniques that allow the analysis of these interrelated network
without loosing the perspective of the dynamic effect of change. The use of case studies
is very effective since they allow the study of the change process from a holistic
perspective. It is necessary to conduct meta-studies that allow the integration of
commonalities of the change processes among different industries, sectors, cultures and
temporal settings. It is necessary to detect the differences of change processes to improve
the development of new theories, concepts and procedures. Studies have to be done
across the organization, considering not only the perceptions of specific hierarchical
levels but the perceptions and expectations of a representative sample of the organization.
The integration of multiple disciplines becomes important. Organizational and
behavioral sciences help to set the contextual considerations and to structure the theories
and necessary knowledge to understand organizational change. Systems and engineering
approaches help in structuring and modeling the complex causal relationships that govern
organizational change. Information technology aids in unifying all these concepts and the
272
myriad of data gathered in the different case studies in a more usable tool that explains
what to change and how to perform it.
Finally, for the practitioner, it is important to consider the effect that the
differences between perceptions and expectations of the change process have over the
overall organization and the different change initiatives attempted. It is necessary to
recognize that change is a function of both top management compromise and everyone’s
involvement. Communication, coordination and empowerment are basic elements that
have to be considered when implementing any organizational change initiative. Finally, it
is necessary to have the methods and tools to effectively and efficiently measure change
so it is possible to define the success or failure of any initiative at any point of time.
Feedback and control are not only aspects to consider at the end of any project but during
every stage of it: definition, development and implementation.
The next chapter introduces the Influence Model for Organizational Change –
IMOC- as a conceptual model that will unite the different views mentioned before and
will serve as the framework for more detailed and profound research that, hopefully, will
develop a more specific tool to model organizational change.
273
Chapter 5
The Influence Model for Organizational Change
5.1 Introduction
The goal of this research effort is to present a conceptual model that delineates the
relationships involved in an organizational change process. The model represents the
dynamic links and causalities presented in a complex social system such as an
organization. This endeavor suggests the use of concepts and tools of systems dynamics
and enterprise modeling to describe and model the different activities, relationships and
effects produced during organizational change.
5.2 Representation of Change
Change implies a multidimensional approach that includes human, operational
and environmental dimensions. Figure 5.1 depicts the intricate and complex relationships
that are involved in multidimensional change. Human dimensions affect those variables
directly related to the human component within the organization. Organizational change
might be triggered by human considerations such as the need to develop programs to
improve or enhance climate or culture within the organization.
Change directly affects the human component of the organization. Since
complexity in the organization arises due to the intimate and complicated relationships
existing between individuals within the organization, any change that disrupts these
274
relationships affects the quasi-equilibrium that exists within the different entities that
form the organization.
Change occurs when a punctuated event alters the current situation in the
institution (Sastry, 1997, Kelly and Amburgey ,1991). Since these punctuated events are
multiple, the human systems that compose the organization are constantly fluctuating
(Mitleton-Kelly, 2000), and these fluctuations influence and are influenced by the change
process.
Change also affects the normal procedures executed within the firm. Radical
change implies the review and redesign of main business processes to attain better ways
to perform business (e.g., Hammer and Champy, 1993). Appropriate performance
measures would reflect a need for change in processes or reveal whether the change
Competitors
Government
Similar institutions
Market
pressure
Organizational
actions
Operating performanceFinancial measuresQuality
issues
Employees perceptions
Management
expectations
Human
Needs
Need for change
Operating
Environmental
Human Change triggers
Causal interactions
Fig. 5.1 Change as a multidimensional process
275
resulted in improved business processes. Variables that are related to the way the
organization performs business are part of the operational dimension of change. Again, a
cyclical relationship exists between the need for change due to poor performance and the
expected performance after change has been implemented.
Finally, the effect of the environment on change is also critical. Forces due to
market, consumer expectations, government regulations or the effect of similar
organizations on the firm are influential for change; however, lack of understanding of
the purpose of change can have a negative influence over the environment.
Environmental components such as consumer, market or society might, at some point, be
negatively affected by the proposed change. They might reject the new approaches to
conduct business since they may not be ready for what the organization is proposing or
they do not understand the purposes and objectives of the change and have a different
view of the final results.
An example of the multidimensional effect of change can be the implementation
of a new ERP system in an organization. ERP requires a complete redefinition and
change of organizational structures and procedures. Internal customers (or users) will be
affected since procedures and processes will be different and will require a different
approach in execution and performance evaluation. Furthermore, cross-functional
processes resulting from the new definition of activities might be contrary to the
traditional hierarchical structure of the organization, requiring a new approach to defining
authority, functions integration and communication. Finally, customers and suppliers
might not be ready to conduct business under the new rules and approaches, and might
276
need to change to adjust to the new requirements (e.g., Holland and Light, 1999, Umble
and Umble, 2002, Crowe, et al., 2002, Powell. 2002).
Table 5.1 shows a summary of the different critical variables, as defined in the
literature, that affect and are affected by organizational change and how they can be
classified depending on the different dimensions. As seen, the multidimensional effect of
change is supported by the literature. Burke and Litwin (1992) defined transactional and
transformational variables included in the dimensions, such as environment, culture,
mission, procedures and performance measures. It becomes important to link the targeted
variables to the environmental and internal conditions existing in the organization before
initiating change. It is possible then to affirm that these links define the actions that have
to be taken to perform the required change or the process of change.
Figure 5.2 describes organizational change using a closed-loop system’s
perspective (Ogata, 1992). Let i(s) be the set of contextual conditions and strategic
goals of change at a certain initial point of time. This set s is defined by measures that
assess different aspects of the contextual conditions such as operational and financial
measures, customer and supplier perceptions and organizational and internal measures.
Let o(s) be the expected final results of the change initiative after a certain
amount of time. The expected results are given in terms of new goals in the different
areas that need to be improved or changed. These goals need to be assessed in some way
to determine whether the results of the initiative are successful.
277
Table 5.1 Critical success variables classified by dimension of change
Author Human Operational Environmental
Hammer and
Champy, (1993)
Leadership, commitment,
human implications
Integration, goals and objectives,
process definitions, resources,
Hall, et al. (1993) Values and skills, leadership Roles and responsibilities, span,
extend, performance measures,
structure, IT
Talwar (1993) Extent
Kennedy (1994) Teamwork, human
implications
Cooper and
Markus (1995)
Empowerment, commitment
Obeng and Crainer
(1994)
Participating people,
stakeholders
Lee (1995) Culture, leadership,
commitment
Work environment, management
systems, formalization
Fagan (1995) Creativity Innovative environment
Clemons (1995) Political risks Functional risks
Kotter (1995) Culture, teamwork Strategic planning, communication,
methodologies, time horizon
Maull, et al. (1995) Human factors Strategic planning, definition of
purpose, performance measures,
processes definition, IT
Love and
Gunasekaran
(1997)
Skills, motivation, culture,
teamwork
IT, structure, communication,
integration
Narasimhan and
Joyaram (1998)
Involvement and commitment Process management, performance
measures, process ownership,
methodology, data availability,
systems view
Identification of
customers’
requirements and
types
Guimaraes (1997) Education and training,
empowerment, culture,
commitment
Efficient use of resources, project plan
and management, integrated approach,
IT, process definition, communication
and integration
Customer
orientation, outside
consultant
Beugre (1998) Individual justice Procedural justice
Jaffe and Scott
(1998)
Leadership, commitment Structure, system’s approach,
performance measures, flexibility,
methodology
McGarry and
Beckman (1999)
Empowerment, motivation,
culture, commitment
Product, expertise, process definition,
IT, communication
Market, customers,
environment
Wu (2000) Customer
orientation
Arora and Kumar
(2000)
Human factors Planning, data, IT, project definition
and management, performance
measures
Customer
orientation
Thong, et al.,
(2000)
Empowerment, participation
of neutral staff
Planning, methodology,
communication
Public opinion,
political and social
influences
278
Using closed-loop system’s properties (Ogata, 1992) it is possible to show that:
Hence, expression 5.1 indicates that the results of the change process are a
function of the process of change, the corrective actions taken during the change initiative
and the initial conditions of the systems. Clearly, it is necessary to develop a complete
diagnosis of the initial conditions of the organization before attempting to change, and to
track the partial results of the change with the appropriate measures. The results of this
diagnosis will indicate not only the set of initial conditions of the system, but will also
define the expected results and the processes needed to generate change. Monitoring the
results of the different change projects will provide the necessary information to perform
Process of change = f(Context,
Content)
Context,
ContentExpected
Content
Ÿ Environmental and institutional
factors trigger the need for change.
Ÿ Management decides where to
implement change and what type of
change is needed
Ÿ With this information, the required
methodology for change is defined
Change is implemented. Since
it is a dynamic process, partial
results are compared with
expected results
(Content)) Change, of (Process
ActionsCorrective and Control
·
=
f
The difference between the
expected vs. the perceived
results of change is used as a
control variable
Corrective actions are taken depending on the
type of methodology used for change and the
continuos assessment of expected vs. perceived
results of change
Fig. 5.2 Closed-loop representation of the
organizational change process
(5.1) )(tactions) Corrective and Control change, of (Process
change of Process(t) oio =
f
279
control and corrective actions proactively. Thus, in addition to defining the content and
process of change, the definitions of the initial contextual conditions and monitoring
systems are necessary, but not sufficient, elements for change. The experience at the
Agency indicated that a previous knowledge of the overall situation and readiness for
change would have been important to increase the acceptance of the different changes
recommended by the BPR group hired to redesign different processes in the firm. This
previous knowledge would have been the initial point on which to base the different
proposals and, in addition, would have been an indicator of which areas were the more
critical for accepting change and innovation at the Agency.
However, the process of change is not a discrete and easily predictable activity.
Although previous experiences create a possible pattern of decisions in the change
context (Amin, et al., 2000), individuals accept change as a conscious choice after a
learning and adaptation process (Mitleton-Kelly, 2000). Thus, decisions and actions
concerning organizational change can be defined as a process where decisions are based
on past experiences and past results.
Figure 5.3 depicts the stochastic behavior of change. Using the three-stage model
developed by Lewin (1951), it is possible to argue that each stage of the model defines a
series of actions and results.
Unfreeze FreezeChange
))(t)/(t(Action ),(tAction iiijij jp )(tt)/Result(t(Action t),(tAction i)jikik ++ kp
)(t(Result ),(tResult ijij jp t))(t(Result t),(tResult ikik ++ kp
t) (t o +
Fig.5.3 Organizational change as a stochastic process
280
After the initial conditions described by i(s) define the necessary goals and
actions to be executed, the physical process of change initiates. Lewin’s model describes
this step as unfreezing or creating motivation and readiness to change (Burke, 1992).
Actions resulting from this stage will be a function of the initial conditions. Thus, Action
j will be taken at time ti with a probability p, which is a function of previous conditions
that similar actions have been taken for similar initial conditions. Specific Action j to
unfreeze will generate Result j with a probability pj as a function also of previous patterns
of resulting actions. Result j will either provoke a redefinition of the unfreeze action or
result in a set of changing actions, called here Action k. The probability of taking Action
k is a function of previous experiences after having Result j. Finally, changing actions
will result either in a final condition o(s) or in a feedback process consisting of
corrective actions. Inputs corresponding to the different critical success factors motivate
the adoption of change initiatives tending to redesign specific projects. These projects,
coordinated and applying different techniques, will be part of a more complete change
process ending in a total organizational transformation.
To understand organizational change, two characteristics that describe the process
of change have to be considered: the disequilibria induced by change and the
interdependence of actions and results. Since change is induced through a disruption in
the organizational routine, equilibrium is broken. Adjusting to the new situation becomes
critical because of the necessity of diminishing the disrupting effects of change in the
long term; however the actions taken to implement change are a function of the
immediate results of previous actions. Thus, independence between the different stages in
281
figure 5.3 cannot be assumed, making it difficult to model change using traditional
stochastic approaches.
Sterman (2000) affirms that policy resistant organisms behave as damped
systems. This behavior is shown in figure 5.4. There is a transition or adjusting period
during which new policies are adopted or, in the case of organizational change, change is
implemented. The objective of the change process is to minimize the difference between
the desired and the resulting change behaviors. In figure 5.4 o represents the resulting
changes after the initiative has been implemented and o* represents the set of desired
conditions and behaviors expected after the change initiative has been implemented. The
objective of the change process is to minimize the difference o* - o.
The control and corrective actions serve as feedback for the actions taken to
accomplish change. It can be argued that these actions produce instability during the
change period. The instability generates an adjusting period that, as seen in figure 5.4,
can be described as the disequilibria induced by radical change within the organization.
The response of the system would be of adjusting and evolving towards the new
behavior. However, this adjusting period can be seen as an erratic and chaotic period that,
if not foreseen and planned, can be frustrating to the organization (Burke, 1992).
i
o
o*
Time
Ex
pec
ted
ch
ang
e
Adjusting
period
Fig. 5.4 Critical elements in organizational change
282
When managing change it is important to minimize both the time and effect of the
adjusting period. At the same time, change management should aim for optimizing the
expected results of the change process. These activities need to be performed
continuously during the life of the projects and then as a routine activity in the
organization.
The experiences at the Agency indicate that despite constant management
monitoring of different variables, the primary performance measures used to assess the
results of a project are sales and revenue. Data from other aspects such as customer
perception and personnel analysis is not efficiently used to assess the level of success of
the different initiatives. Communication between divisions has been a major difficulty
during the implementation of different initiatives causing not only a high level of
redundancy of the information, but the lack of integration needed to implement and
follow up the projects.
5.3 Characteristics of the Influence Model For Organizational Change
Since organizational change is a complex set of competing processes that
integrate different elements of the organization, it is important to develop a model that
not only includes the elements that are involved in the change processes, but that
integrates the dynamic behavior of change, the context in which organizational change is
developed and the pertaining measures of organizational change (Zayas-Castro, et al.,
2002).
Such a task needs the help of several tools that have been developed and oriented
to model organizations and their behavior. As Vernadat (1996) mentioned, any modeling
283
methodology is characterized by the definition or purpose of the model, the aspects to be
covered by the model and the detailing levels of the model. As a consequence, it is
possible to posit that modeling methodologies oriented towards the modeling of
manufacturing or business process are useful to model organizational change.
First, critical systems thinking helps to describe problems in terms of social
systems. Jackson (2001) defined critical systems thinking as an approach to analyze and
solve complex societal problems through a combination of concepts derived from social
theories and systems thinking. Complexity arises from the interrelationships of elements
within a system and between the system and its environment. It provides a framework to
see how intricate the interrelationships and interconnectivity between individuals, ideas,
technology and behaviors are, and the environment that surrounds the organization
(Mitleton-Kelly, 2000). Systems theory outlines the need of a holistic view of the
organization including the most important relationships and feedbacks that are present
across it (e.g. Barnett and Carroll, 1995, Ackerman, et al. 1999, Gharajedaghi, 1999, Wu,
et al., 2000, Sterman, 2001).
Second, the concepts of enterprise modeling help to develop the different levels of
explanation that IMOC proposed in this research. Radical change affects the traditional
relationships of the different elements of the organization. At the same time it brings the
organization to a condition of disequilibria, which requires the organization to seek
different alternatives and strive for survival (Mitleton-Kelly, 2000). IMOC integrates the
functional, structural and dynamic views of the organization, which permits the complete
representation of the intricacies of organizational change process considering the
functional and behavioral elements embedded in the enterprise. These three views can be
284
analyzed in terms of both a physical system that includes the variables that are
dynamically related, and a control system that models the decisions and information
needed to control and operate the physical system. DeTombe’s (2001) Compram
methodology to solve complex societal problems will be used as a guideline to model
organizational change from the three different views proposed in enterprise modeling.
The semantic model presents a global view of the physical system that defines the
different actions involved in the decision of initiating a change project from a functional
level. The causal model includes a series of sub models that present a more detailed view
of the different relationships and feedbacks involved in the decisions of initiating change.
These sub models are presented using a structural approach that describes with more
detail the information and decisions needed to generate the change. The representation of
the dynamic model is conceptual with the use of several sub models detailing the
causalities described in the previous layer.
Finally, system dynamics models the different relationships, feedbacks and
causalities that are present in a complex system. System dynamics models are suited to
present social systems without the limitation of traditional mathematical models
(Klabber, 2000). Conceptually the different layers of IMOC use the methodologies
developed by Forrester (1961) and explained by Sterman (2000) among others to present
the dynamicity and causality that characterize complex systems, rather than more
concrete, organizational change. The model goes from a general or global view to a more
detailed view, linking the different levels in order to show that organizational change is
not an isolated process but a set of coordinated and integrated activities and competing
processes all oriented towards the same objective.
285
Social theories and change models provide the theoretical background of the
proposed Influence Model for Organizational Change. The literature review presented in
previous chapters described different concepts and theories that form the basis for
organizational change. Two lines of thought are used as a theoretical framework for the
proposed model. The Structural Inertia Theory developed by Tushman and Romanelli (in
Sastry, 1997) and the inertia model for organizational change presented by Kelly and
Amburgey (1991), provide the theoretical support to propose that radical change is a
punctuated action that overcomes organizational inertia and that resistance to change
appears when core elements of the organization are disturbed. Secondly, the Burke and
Litwin (1992) conceptual model provides the concepts of transformational and
transactional change and the relationship between transactional and transformational
variables with the outcomes of change. In addition, systems thinking responds to the need
for viewing the organization, and the different activities, decisions and results as a
complex combination of relationships and causalities in the context of a social
environment.
IMOC dynamically links the context and processes of organizational change with
the organizational outcomes during and after the change initiatives have been conducted.
The Organizational Model for Organizational Change is characterized by the following
elements:
- Dynamic System: The model represents a dynamic system that is constantly
changing over time. This change is multidimensional and occurs simultaneously in
the human, operational and environmental dimensions of the organization.
Customers, society and employees are affected by change (Powell, 2002) and they are
286
active elements in the multidimensional boundaries of change. The model uses causal
loop diagrams to show the constant feedbacks existing among the different variables
and elements involved in the different change processes that are present at any
moment in an organization. Feedback and control are part of a dynamic system and
strategy integral to any change initiative (Barnett and Carroll, 1995, Ackerman, et al.
1999, Larsen and Lomi, 1999, Winch, 1999, Sterman, 2001). These feedbacks
correct any factor whose level is less than the appropriate (Burke and Litwin, 1992,
Barnett and Carroll, 1995, Ackerman, et al., 1999). It is necessary to acquire both
qualitative and quantitative data to assess the changing process and to discover new
opportunities for improvement and learning.
- External Forces: External forces motivate organizational change (Porter, 1998,
McAdam and Mitchell, 1998, Barnett and Carroll, 1995, Amburgey, et al., 1993,
Ettlie and Reza, 1992, Burke and Litwin, 1992) and are inputs for the radical change
effort (Barnett and Carroll, 1995). External Factors are: institutional environment,
market volatility, competition, technology (Barnett and Carroll, 1995), external
environment (Burke and Litwin, 1992), other similar organizations going through
change, and organizations getting too similar (Bloodgood, et al.2000), among others.
- Internal forces: Internal factors also motivate organizational change (Ackerman, et
al., 1999, McAdam and Mitchell, 1998,GSA, 1996, Barnett and Carroll, 1995,
Amburgey, et al., 1993, Ettlie and Reza, 1992, Burke and Litwin, 1992), and can be
considered as inputs for the continuous transformation efforts (Barnett and Carroll,
1995). Burke and Litwin (1992) define mission and strategy, leadership, and culture
as transformational factors that affect change at the organizational level. In addition
287
they define organizational structure, management practices, climate, systems, task
requirements and individual skills, individual needs and values and motivation as the
transactional factors that are based on the current climate of work and are directed to
modify or change specific activities or processes.
- Outcomes: Outcomes measure the content of the change, that is, what actually
changed in the organization (Barnett and Carroll, 1995). It is necessary to have tools
to measure the process of change and its results (Barnett and Carroll, 1995). A
performance system must integrate all the areas of the organization and capture the
interdependence between processes. Literature about performance measures defines
5 dimensions: financial performance, operational performance, human resources,
customer satisfaction and innovation and change. Performance measures must link
both transactional (processing) issues and transformational issues (Waggoner, et al.
1999, Burke and Litwin, 1992, Kaplan and Norton, 1992) with the outcomes of the
changing processes (Ackerman, et al. 1999).
- Internal processes: Hall, et al. (1993) propose that in order to be successful a radical
change initiative has to consider both the breadth and depth of the projects. The
breadth is concerned with how broadly the processes have to be redesigned in order to
improve performance across the entire business unit. Depth is related to the degree to
which the core of the organization is affected. Hall (1993) defined core elements as
roles and responsibilities, measurements and incentives, organizational structure,
information technology, shared values and skills. Core elements are those structures
that are embedded in the organization’s culture and routines and that are elements
that, subject to change, increase the probability of failure in the organization as stated
288
by the structural inertia model (Barnett and Carroll, 1995, Amburgey, et al., 1993,
Kelly and Amburgey, 1991).
This new model is a different approach to change, in that it attempts to explain
how change can be implemented successfully instead of describing what to do in order to
achieve change. The model presumes that a diagnosis of the organization has been done
and that the elements necessary to guarantee a successful transition have been taken into
consideration. Diagnosis is not a unique tool and it needs to be used in conjunction with
other tools so that it is possible to define not only what is necessary, but also how to do it
(Armenakis and Bedeian, 1999).
5.4 The Semantic Model: The Global View of the Model
The first level of the Influence Model for Organizational Change models the
global physical view of the change process. It presents organizational change as a set of
different change initiatives that are managed through different methodologies, but all
coordinated towards the same purpose, which is a revised business. The changing effort
will be limited by both internal and external factors and will be constantly monitored by a
set of performance measures that will serve not only as indicators of the resulting change,
but also will serve as feedback in the continuous changing process. Organizational
characteristics limit the change process to the organization, and environmental factors
would shape the change process depending on the motivational forces that generate the
need for change. These performance measures must be able to present a holistic view of
the organization, integrating multifunctional process and their interrelationships and at
289
the same time continuously monitoring the levels of the different critical factors affecting
the change effort.
Figure 5.5 shows a causal loop representation of the first level IMOC considering
the different dimensions involved during the change process. In addition, table 5.2
defines the different variables depicted in the model.
From figure 5.5 it is possible to express the different causal relationships implied
in the first level of IMOC:
Change in performance measures = ƒ(organizational change processes) +
ƒ(organizational outcomes)
(
5.2)
Organizational change processes = ƒ(need for change) (
5.3)
Need for change = ƒ(Change and innovation forces) (
5.4)
Change and innovation forces = - ƒ(change in performance measures) (
5.5)
Fig. 5.5 The Influence Model for Organizational Change. A causal loop
representation of the global physical view.
organizational
outcomes
change in performance
measures
managerial
decisions
organizational
processes
-
+
+
+
organizational
change process
need forchange
change and
innovation forces
+
+
+-
290
Table 5.2 Variables definition: The semantic model
Variable Definition and Key Elements Organizational
outcomes
They are the results from the different activities executed by the
organization. Organizational outcomes can be seen in terms of
products and/or services offered, internal processes and other
activities that the organization executes in order maintain business.
Change in performance
measures
It is the change over time of the performance measures used to
assess the productivity of the organization. Depending on the type
of measure a positive change may indicate an improvement in the
results compared from previous period. On the other hand a
negative change may indicate also an improvement in the actions
that generate results. As an example a positive change on sales and a
negative change on costs, both indicate an improvement in results.
Managerial decisions They are the set of decisions taking by management as a response to
the detected performance measures. The decisions trigger actions
tending to modify, improve or maintain the current performance.
Organizational
Processes
They are the processes and actions routinely executed by the
organization as part of its activities. Among them are activities that
involve customer’s supply chain, provider’s supply chain, internal
supply chain and managerial processes.
Organizational change
process
They are the processes tending to achieve organizational change.
Among them are organizational restructuring, organizational
redesign, process modification, process redesign using continuous,
incremental or radical change processes.
Need for Change It is the existing perception among the members of the organization
that change is needed in some way. It is due to poor performance,
lack of effectiveness, lack of consistency among others.
Change and innovation
forces
They are the forces that pressure and motivate change. They can be
external and internal forces, and can be defined as coming from
customers, market, similar institutions, government, employees and
management, among others.
Organizational outcomes = ƒ(organizational processes) (5.6)
Organizational processes = ƒ(managerial decisions) (5.7)
Managerial decisions = - ƒ(change in performance measures)
(5.8)
As seen in figure 5.5, change and innovation forces, both internal and external,
trigger the need for change (expression 5.4). This need for change generates strategic and
tactical change processes (expression 5.3). The greater the need for change the greater the
291
impact on the change processes defined by the organization. Success in change generates
changes in performance measures (expression 5.2). If change improves the execution of
the activities of the organization, a positive change in performance measures would be
noticed. Conversely, if the change initiative fails, it is possible to argue that decremental
performance may be obtained. Thus, a negative effect on the corresponding performance
measures will appear.
Furthermore, organizational outcomes have a positive feedback on performance
measures (expression 5.2). Recalling the definition of a positive feedback, it occurs when
an increment or reduction of the cause generates an increment or reduction in the effects.
If organizational outcomes change, the corresponding performance measures should
show the change. As a consequence of the feedback, managerial decisions are made
accordingly either to improve a decreasing performance or to keep current performance
levels. Performance measures have a negative feedback on management decisions
concerning change (expression 5.8). Thus, good performance may decrease
management’s desire to take new actions since the organization feels comfortable with
the results. Decisions from management will influence organizational processes since
they decide actions, policies and activities (expression 5.7). If managerial decisions
diminish because of good organizational performance, an effect in the same direction will
affect organizational processes, which, in turn will have a direct effect on outcomes
(expression 5.4).
Since it is important to develop appropriate performance measures to track the
partial results of any change initiative, it is important to understand the different elements
that influence performance measures as a variable in the change process. Figure 5.6
292
shows a cause tree2, showing the variables that have a direct influence on a dependent
variable. In this case the need for change, organizational processes, outcomes and change
processes directly influence performance measures.
Two important aspects of measurement are depicted in figure 5.6: measures of
objectives and goals and measures for assessing performance and operations. It has been
found that organizations have inconsistencies between the measures used for setting
objectives and goals and the measures used to evaluate organizational performance from
a more traditional approach, such as financial measures (Crandall, 2002). To successfully
implement change it is necessary not only to develop the appropriate performance
measures according to the organization and its characteristics, but also it is necessary to
use them. Measures need to be local so that they can be applied to different layers of the
organization, but in addition, they need to be related globally with the performance of the
organization (Crandall, 2002). At the Agency, for example, sales and revenues are the
main goals of the organization. It is necessary to develop measures that map the
operational results to the main goals and to define key indicators that can explicitly
explain variations in sales and revenue, as well as other indicators that indirectly offer
information, to understand the behavior of the key performance variables. The use of
2 For more information on this and other operational concepts on System Dynamics, please refer to the
Vensim® PLE User’s guide.
change in performance measuresorganizational change processneed for change
organizational outcomesorganizational processes
Fig. 5.6 Causal relationships for change in performance measures
293
techniques such as Activity Based Costing and Activity Based Management, plus the
availability of information across divisions, may be useful when determining not only the
effectiveness but also the efficiency of the operations.
5.5 The Causal Model. A Global Control View of the Change Process
The second level of the model presents a global control system of the actions and
decisions that evolve when the decision to attempt a change initiative is taken. Figure 5.7
depicts the causal model that corresponds to this level of detail in IMOC.
Table 5.3 defines the variables included in the global control view of the model
that are not defined in the physical view. These are radical change and innovation,
transformational and transactional variables and change outcomes.
Fig. 5.7 The Influence Model for Organizational Change: A global control
view
Change inPerformance
Measures
Need for
change
Change
outcomes
Organizationalchange
processes
Change intransformational
variables
Radical Change
Innovation
Change in
transactional
variables
+
+
++
-
-
+
+-
+
+
Change and
innovation
forces+
+
+
-
294
Change and innovation forces motivate and press for change creating a need for it.
The need for change is translated into a change initiative classified either as radical
change or innovation.
The model proposes that while environmental and internal forces are more likely
to motivate organizational change, institutional forces would tend to motivate specific
innovations within the organization. According to the model, once the need for change
has been identified, the need for innovation is created. During the case study and for the
purpose of this study, forces such as competitors, other agencies, players and retailers
were classified as environmental, while government, management and employees were
Table 5.3 Variables definition: The causal model
Variable Definition and Key Elements Radical Change A deliberate attempt to modify the entire organization, or one if its mayor
components
Innovation Adoption of technologies, administrative systems or procedures that will
modify everyday activities
Transformational
Variables
Variables concerned with core areas of the organization and their
alterations are likely caused by interactions with environmental forces.
Change in transformational variables would require an entire new
behavior from the organization. The transformational variables are
external environment, mission and strategies, leadership and
organizational culture.
Transactional
Variables
Variables related to those elements that define the procedures and
systems that execute the day-to-day transactions within the organization
and between the organization and its environment. The primary ways of
alterations of transactional variables are via short-term relationships and
internal forces. They are structure, management practices, systems
climate, tasks requirement, individual needs and values, motivation and
performance measures.
Change Outcomes They are the expected results of any change initiative. The expected
outcomes can be improved. Outcomes can be improving customer
services, shorter cycle times, better quality of services and products,
improved organizational responsiveness, costs optimization and new
products and services, among others.
295
defined as institutional. Internal forces are a combination of institutional forces that can
push the organization to strategic actions. In the case of the Agency, participants in the
study considered that management and government have triggered the adoption of new
procedures and actions that have been applied in other agencies as a reaction to specific
situations. These actions are taken without strategically linking them with what the
environment (market, customers, etc.) needs. New games, promotions and internal
procedures that have been adopted are considered total or partial failures because of the
apparent lack of consistency between goals and objectives and current policies and
decisions. In the end, the adoption of new systems results in different ways of performing
the same tasks, without really introducing innovation to the business. This fact was
confirmed in chapter 4. It was shown that there was not significant difference among the
perceptions of the extent of the different projects. The same proportion of respondents
perceived changes as ranging from new processes to new business, which indicates that
there is not a clear definition of the goals and purposes of the different projects.
A plan for implementing change has to determine whether radical or incremental
change is needed. Radical changes involve changes of transformational variables that
will, as part of the process of change, generate transactional changes. Finally, the results
of the change and innovation process will be shown in the performance of the
organization. As an example, the Agency planned for more than a year the introduction of
a new product that was rejected by the state legislature at some point. Because of
specific economic situations, the product had to be developed and implemented in a short
period of time. The product required a new approach from the Agency since it implied
the use of innovative technologies. The previous strategic and tactical development of
296
the product smoothed its introduction and implementation, with excellent results in sales
and attractiveness.
Change can generate a need for innovation. It is proposed that innovation, without
real change, will influence transactional variables in the organization, resulting in
changes in daily routine and operational performance. In certain cases the adoption of a
new system or procedure implies a more profound change in the organization, so once an
attempt to adopt an innovation has been carried out, it is necessary to create detailed
strategies to induce transformational change while the transactional change is attempted.
The model proposes that inertia allows the organization to continue operating with the
new adoption, even without implementing the necessary radical change. However, after a
short time the organization will show diminishing performance.
The following situation from the case study exemplifies the behaviors explained
before. As part of the recommendations of a BPR team the Agency developed a new
process for recruiting and licensing new retailers. A new group formed by individuals of
different divisions executed the new activities. Initially, the group performed well,
streamlining the licensing process, reducing the amount of steps and forms needed. The
new process won the Missouri governor’s award for productivity in 2000 and was
considered by retailers a success. Internally, however, the new group generated a power
struggle between divisions and responsibilities since the necessary cultural changes were
not induced. In conclusion, two years after the group was created there is uncertainty
about its survival, group members have low motivation and their work is being
considered of low priority for the Agency.
297
Figure 5.8 depicts the causes for change in transformational and transactional
variables. The IMOC proposes that transformational variables change both from the need
for innovation and because of radical change.
Additionally, change in transactional variables is directly related to the need for
innovation and the change in transformational variables. These relationships can be
expressed as follows:
Change in transformational variables = f(Innovation) + f(Radical Change) (5.9)
Change in transactional variables = f(Innovation) + f(Change in transformational
variables)
(5.10)
Expression 5.9 shows the direct effect innovation and radical change have on core
variables in the organization. Expression 5.10 shows that change in transformational
variables is also influential on change in transactional variables. This cyclic relationship
is only one example of the complexity of change and the problematic tasks involved in
modeling it. The previous example illustrates this fact. The creation of the new group
resulted in the modification of certain procedures that used to be performed by different
Fig. 5.8 Cause trees: Change in transformational and transactional variables
Change in transformational variables Innovation
Need for change
Change in transactional variables
Change in transformational variables
Radical Change Need for change
Change in transactional variables
Innovation
Need for change
Change in transactional variables
Change in transformational variables
Change in transformational variables Innovation
Radical Change
298
divisions. The adoption of these new procedures required at the same time profound
change in the way the different divisions viewed functions, responsibilities and power.
Several sub models are derived from this view of IMOC. These sub models are
defined connecting the different propositions tested in Chapter Four. The sub models in
IMOC link variables that are present in both the semantic model presented in the previous
section, and variables defined in the global control view depicted in figure 5.7.
Furthermore, the sub models include additional elements common to system dynamics
models such as stocks and flows to better explain the relationships and propositions.
Figure 5.9 depicts the causal dynamic relationships proposed in proposition 1 of
the research effort: Radical change motivated by innovation is more difficult to
implement than radical change motivated by strategic or environmental reasons.
Fig. 5.9 Causal relationships for proposition 1
Change and
innovation forces
Need of innovation+Transactional
change
Transformational
change
Need for radical
change
++
+
Organizational
outcomes
-+
+
+
+
Organizational
change outcomeResistance to
change
+
-
-
Delays
299
Dark lines indicate the possible actions and causalities defined by this proposition.
Organizational outcomes should induce change. If this change induces innovation, then a
transactional change of some sort may be necessary. Furthermore, this transactional
change may induce a more profound change that could trigger a need for a more radical
change. In this case the adoption of the initiative may lead to negative results, which will
generate resistance to change due to the negative perception of the past experience. This
resistance will delay possible change actions and affect the expected results. The
expected results of the change initiative will affect organizational outcomes, which then
influence the forces of change.
The variable resistance to change was introduced in this stage of the model due to
the responses of the participants in the case study. The majority of the interviewees
agreed that the effect of previous experiences affected their attitude toward participating
in new change initiatives. Their experiences indicated that most of the projects were
generated as a reaction to specific situations and were developed and implemented
without the appropriate communication. Individuals did not have the knowledge or the
ability to adapt to the new systems and situations.
Dotted lines indicate a different course of action. A need for change must first be
analyzed from a transformational perspective before attempting the adoption of an
innovation. If the innovation is needed without a required transformational change, then
the process will follow the needed transactional adjustments. But if a radical change is
needed it is necessary to develop the required structures to achieve change before
attempting the adoption of the innovation. The diagram suggests that this process
induces a positive causal relationship on organizational outcomes, which will reduce
300
resistance to change, accelerating the process of change and increasing the likelihood of
success for the change process.
Figure 5.10 shows the effect of different variables on resistance to change, and on
the outcomes of the organizational change process. As shown, previous experiences
directly influence resistance to change. This resistance then influences the expected
outcomes of the change process. This supports that fact that it is necessary to constantly
monitor the outcomes of the change process to immediately analyze and implement the
possible actions to correct it, as depicted in figures 5.2 and 5.4. The anticipated result of
the change process can be expressed as:
Organizational change outcome = f(Resistance to change) (5.11)
Replacing Resistance to change by an expression that includes other relevant
variables can modify expression 5.11. This new expression can be stated as:
Organizational change outcomet = f(Change and innovation forcest, Transformational
changet, Organizational change outcomest-1) (5.12)
Expression 5.11 shows the time dependence of the process of change. Outcomes
of the change process are directly influenced by previous results. Recalling from
expression 5.1 that o(t) denotes the anticipated final results of the change effort and
Resistance to change Need for radical change
Change and innovation forces
Transformational change
Organizational change outcomes Resistance to change
Fig. 5.10 Cause tree for resistance to change
Organizational change outcomes Resistance to change Need for radical change
Organizational change outcomes
301
I(to) expresses the set of initial conditions at a certain point of time, it is possible to
combine both expression 5.1 and 5.11 such that:
o(t) = f(I(to), Change and innovation forcest, Transformational changet, Process of
changet, Control and corrective actionst) (5.12)
Expression 5.12 indicates that the anticipated or expected results of a change
process are a function of elements such as current and previous results, the process of
change being used to implement the change initiative, the control and corrective actions
taken to minimize the adjusting effects of change, the extent to which transformational
change has been accomplished and the motivation forces that triggered the change
initiative. Experiences at the Agency corroborate this relationship. Interviewees in the
case study indicated that among the different factors necessary to successfully implement
change are a diagnosis of the organization, efficient feedback mechanisms, planning and
definition of the change process, and communications during and after the
implementation process. Furthermore, as seen in chapter 4, respondents of the survey
considered that employees’ perceptions are an important mechanism to trigger change
and that their participation is essential to successfully develop organizational change.
Thus, factors defined in expression 5.12 are essential components for change effort.
Proposition 2 of the research effort states that environmental and internal forces
will motivate radical change while institutional forces will motivate innovation. As
an extension of this, proposition 3 asserts that a need for change will induce a need for
innovation. Moreover, proposition 4, innovation will generate a change in
transactional variables, is also a result of proposition 2. Figure 5.11 depicts the
relationships derived from the interconnectivity of these propositions. The need for
302
change grows as the pressure of change increases due to innovation and change forces.
These forces are the result of existing influences from the environment, internal forces
and decisions concerning the need to be similar to either competing or akin organizations.
The need for change is reduced by managerial decisions concerning change.
These decisions affect both transformational and transactional variables that at the same
time affect innovation and change forces. Furthermore, similar organizations generate the
urgency of adopting innovations to accelerate the goals of becoming similar to other
institutions. The adoption of innovations without a planned change will motivate
changes in transformational variables that will negatively influence the adoption of the
innovation, adversely affecting the innovation and change forces.
Figure 5.12 shows that institutional, internal or environmental forces are not
limited to defining the forces that trigger innovation and change. Alterations in
procedures and routine activities influence change.
Need for
changePressure to change
Innovation and
change forcesEnvironmental
forces
Internal forces
Similar
organizations
+
+
+
+
managerial
decisions
change in
organizational variables
Change in transactional
variables
Change in transformational
variables
+
++
++
+
+-
Fig. 5.11 Causal relationships for propositions 2, 3 and 4
303
According to the figure, the adoption of an innovation that requires changes in
procedures and routines could provoke the need for a more radical change. In addition,
the influence of similar organizations in the adoption of an innovation could again,
require a more profound change to make the innovation successful. As an example, the
Agency adopts games and projects that have been successfully adopted by similar
agencies in other states. The Agency attempts to adopt these projects after a study of the
experiences in other agencies but without analyzing the effects of these adoptions on the
Agency and on the retailers and players. So far most of the adoptions have resulted in
some success. However several games adopted in the past have been discarded because
of the lack of attractiveness for the public. Finally, according to the interviewees most of
the adoptions tend to be related to daily activities or games and not more profound
adoptions that will have effects over the way the organization conducts business as a state
agency.
Propositions 5 and 6 are also related. Proposition 5 asserts that radical change
will generate change in transformational variables. In addition, proposition 6 expands
Innovation and change forces
Change in transactional variables
Change in transformational
variables
Similar organizations
Environmental forces
Internal forces
Similar organizations
Fig. 5.12 Cause tree for innovation and change forces
Pressure to change Innovation and change forces
Change in transactional variables
Environmental forces
Internal forces
Similar organizations
304
the previous assertion as transformational variables will change in a positive direction
even if the change initiative fails. Figure 5.13 depicts the relationships expressed in
these propositions.
The figure shows that managerial decisions influence change in organizational
variables. These changes, even if the initiative is not totally successful, will influence
internal variables - transformational and transactional - leaving the organization in a stage
of semi-readiness to initiate a possible action to attempt a change initiative in the same
area. Nonetheless this argument seems to contradict both what has been stated in the
theory and the fact that previous experiences have been found to have significant
influence over future change efforts. It is possible to argue that any change attempt
breaks the quasi-equilibrium or inertia of the organization. If the next change initiative is
attempted during this timeframe, it is possible to take advantage of the momentum
generated from the previous experience with the proper communication and coordination.
Need for
changePressure to
change
Innovation and
change forces
+
Managerial
decisions
change inorganizational
variables
+
Change intransformational
variables
Change intransactional
variables
Organizational
outcomes
+
+
+
+
+
Fig. 5.13 Causal relationships for propositions 5 and 6
305
The case study helps to clarify these relationships. Despite the fact that from the
recommendations made by the BPR team only one was originally implemented, and that
currently this initiative is being endangered due to the lack of change in transformational
variables that would have made possible the adoption of cross-functional processes,
currently the Agency is implementing some of the other recommendations using
multidivisional teams to plan, develop and implement the necessary changes and
activities that would finalize the different projects being attempted.
Propositions 7, 8 and 9 are important to accomplish a change initiative.
Proposition 7 posits that the success of a radical change initiative will be negatively
influenced by the differences between employees’ perceptions and expectations of
the critical success variables influencing the change process. In addition proposition 8
hypothesizes that the success of a radical change initiative will be negatively
influenced by the difference between employees’ perceptions and management
expectations of the different critical success variables influencing the change
process. Finally, proposition 9 establishes that groups of people with similar
perceptions and expectations of the critical success variables will positively influence
radical change. Figure 5.14 shows the complex causalities resulting from the previous
propositions.
Both expectations and perceptions of change directly affect the perception of need
for change from both management and employees. If there is a difference between
employees and management perceptions and expectations, this difference will negatively
affect the results of a change initiative since both perceive the necessity for change in a
different manner.
306
Several important aspects can be extracted from these relationships. First, it is
necessary to develop the tools and mechanisms to measure the expectations and
perceptions of people. This relates to the need for measuring the effects of any change
initiative across the organization and to relate these effects to the firm’s performance and
objectives. Furthermore, expectations and perceptions are related to these objectives and
the expected results of the change process.
Figures 5.15 and 5.16 show that management’s and employees’ perceptions and
expectations are function of what they anticipate and identify. If their views of change
are different, then the gap between employees’ and management’s views of the change
process increases and no unified goal can be reached. In addition, if there is no feedback
Figure 5.14 Causal relationships for propositions 7, 8 and 9
Perceived changein transformational
variables
Expected change intransformational
variables
Perceived change intransactional
variables
Employee'sperceptions
Employee'sexpectations
Management'sperceptions
Management'sexpectations
Organizationaloutcomes
Need forchange
Innovation andChange forces
+
+
++
+
Expected changein transactional
variables
+
+
+
+
+
+
+
+
Difference betweenperceptions andexpectations inmanagement
Difference betweenperceptions andexpectations in
employees
Difference betweenemployees andmanagement
perceptions andexpectations
+
+
+
-
-
-
-
307
mechanism that reports the outcomes from the change and innovation processes,
individuals within the organization cannot relate the change process with the expected
goals of the organization.
This presents the second aspect to be considered. The necessity of having wide
and open communication channels is a primary goal of any change process in the
organization. Besides having the necessary measures and information, the results must
be communicated; people within the organization will not dedicate their energy to actions
blindly. Additionally, lack of coherence between what management says and does leaves
individuals lost in a dark room.
Employee's perceptions
Organizational outcomes Innovation and
Change forces
Perceived change in transactional variables
Perceived change in transformational variables
Employee's expectations Expected change in transactional variables
Expected change in transformational variables
Fig. 5. 15 Cause tree for employees’ perceptions and expectations
Management's
expectations
Expected change in transactional
variables
Expected change in transformational
variables
Management's
perceptions
Organizational outcomes
Perceived change in transactional
variables Perceived change in transformational
variables
Fig. 5.16 Cause tree for management’s perceptions and expectations
308
Figure 5.17 shows the need of change as a function of the differences between
expectations and perceptions of management and employees. However, if there is
uniformity of expectations and perceptions, the need for change becomes a unique goal
within the organization. Unified criteria for change will result in a united effort triggering
the appropriate mechanisms for change and optimizing the results of the effort.
A third aspect to be considered from the relationships between the propositions is
the effect of groups of people within the organization. Despite the fact that proposition 9
was not verified it is possible to argue that clusters of people with similar criteria or
perceptions might be critical for the change process. Thus, a complete organizational
diagnosis may be relevant to detect these clusters. If it is possible to detect clusters that
favor the change process, it would be possible to benefit from their ideas, views and
perceptions, which could lead the change process within their working units. On the other
hand, the detection of clusters that might resist the change process would give
information on how to approach them and the amount of effort needed to positively
influence these clusters.
The above was partially detected at the Agency during the BPR project.
Individuals in the different working units that were critical to the operational success of
the recommendations were proposed to be part of the new cross-functional groups.
Innovation and Change
forces
Need for
change
Difference between employees and
management perceptions and expectations
Difference between perceptions and
expectations in management
Fig. 5.17 Innovation and Change forces as a function of perceptions
and expectations
309
However, the BPR team did not consider the perceptions of and expectations for the
change process of important individuals in the organization and the resulting
implementation lacked the support of these individuals. In contrast, the organization is
currently using a more integrated approach to implement other recommendations made
by the BPR team, but still lacks the overall diagnosis that would provide knowledge
about the perceptions and expectations of the change process within the organization.
The last two propositions on which IMOC is based are concerned with the effect
of tenure time over the adoption of change and innovation. Proposition 10 suggests that
length of tenure time will positively influence the adoption of transactional change.
In addition, proposition 11 posits that the length of tenure time will negatively
influence the adoption of transformational change. Figure 5.18 describes the causal
relationships existing between tenure time and the organizational outcomes that result
after change is attempted.
Tenure time has a direct effect on transactional variables. As experienced during
the case study, the longer individuals have been working at the Agency, the more likely
they are to accept change in daily activities that will streamline or facilitate their routine.
However, the longer the tenure the harder to adopt changes that would radically modify
their environment and functions.
As shown in figure 5.18 the rejection of radical change results in a negative effect
on transformational variables. Instead of improving conditions such as culture, structure
and leadership, tenure time increases the resistance to change.
310
Resistance to change delays the organizational change process (Fig. 5.9), which
has a negative effect on organizational outcomes. These influences are shown with more
detail in the cause trees depicted in figure 5.19.
During the interviews at the Agency it was possible to detect a propensity to reject
radical change from employees with seniority versus employees with relatively short
tenure time (less than 5 years). Employees with seniority indicated that radical changes
Innovation and
change forcesChange in
transformationalvariables
Change intransactional
variables
Organizational
outcomes+
+
Tenure time
-
+
Need for change
+Organizational
change process
+
+
+
Resistance to
change -
-
Fig. 5. 18 Causal relationships for propositions 10 and 11
Organizational
outcomes
Change in transactional
variables
Change in transformational
variables Tenure time
Resistance to change Change in transformational
variables
Resistance to change Change in transformational
variables
Organizational change
process Tenure time
Fig. 5.19 Cause trees for organizational outcomes
311
would only disturb the way the Agency has been operating and since they have
continuously been increasing sales over time, major changes are not needed.
Finally, figure 5.20 presents an integrated view of IMOC. The figure depicts the
different sub models as separate diagrams showing the different interrelations defined by
the propositions presented in this research effort. In addition, the figure shows the
interrelations between the different views and sub models presented previously. As
shown, the process of modeling change through IMOC starts with the semantic model. It
depicts a holistic explanation of organizational change. The macro variables that govern
change are represented in this view connected with causal relationships. These
relationships model the behavior of the different variables with respect to the other
variables, creating a cyclic representation. The theorist, researcher or analyst selects one
of the variables and can perform a backward or forward analysis to study how the
selected variable affects other variables and how it is affected in the relationship.
Once a variable is selected it is possible to go to the next level and see with more
detail how this factor influences change. Figure 5.20 shows the different sub models
developed to represent the propositions of this research including the macro variables
originally defined in the semantic model.
Thus, it is possible to go back and forth between the sub models and observe how
the selected variable or variables influence change. As an example, the analysis might
select the variable Organizational Outcomes and do a level-by-level analysis to assess
how this variable influence change, and which variables it affects.
312
Fig. 5.20 Integrated view of IMOC
313
The next sections of this chapter contain detailed aspects of the sub models. These
include a preliminary simulation, the discussion of this experiment and a discussion of
the type of variables, information and relationships needed to develop a complete and
detailed simulation of IMOC.
5.6 The Simulation Model. A Detail View of the Change Process
To operationalize IMOC it is necessary to be able to construct more formal
expressions that represent the causal relationships presented in the previous sections of
this chapter. Even though the main objective of this research effort was to develop a
conceptual model for organizational change, to construct these expressions this section
presents an attempt to simulate independent entities of the model.
The study of organizational change requires the analysis of processes and states
that are dynamic and in disequilibria. (Larsen and Lomi, 1999). To model these
characteristics it is necessary to distinguish between state variables, which represent the
condition of the system at a certain point of time (Ogata, 1992), and variables that
represent rate of change over time (Sastry, 1997). Despite the capacity of causal loop
diagrams to model interdependencies and feedback processes, their main limitation is that
they are not capable of modeling stock and flows, and hence unable to define the state of
the system and the rate of change on it (Sterman, 2000).
Ogata (1992) defines the state of a system at any time t as uniquely defined by the
smallest set of state variables at t0 and the input to the system at t t0. If at least n
variables are needed to completely describe the behavior of a dynamic, then once the
input is given for t t0 and the initial state is specified for t0, the future state of the system
314
can be determined. Consider the dynamic system shown in figure 5.21, where ui is the set
of m different inputs, Sj is the set of n state variables and fk(Sj, ui) the set of r outputs.
At any time t, the outputs of the system can be defined as fk(S1, S2,…, Sn; u1,
u2,…,um; t), and the rate of change of the system is defined then as:
The following paragraphs are extracted from Sterman (2000) and they explain
with more detail aspects about stocks and flows that are essential in the development of
the different expressions and relationships that govern IMOC.
Stocks are accumulations that characterize the state of a system. They accumulate
past events and their content can only be changed through an inflow or outflow. These
inflows and outflows that characterize stocks provide the systems with inertia and
memory since without a variation in the flows the stock does not change.
Let Inflow(t) and Outflow(t) be the value of inflows and outflows that control the
level of the stock at any time t respectively. Figure 5.21shows the corresponding system
dynamics diagram for the stock and flow. It shows the effect of inflows and outflows
over the stock. Inflows accumulate certain input over time in the stock, while outputs
decrease the amount of stock over time. The difference Inflow[t-t0] – Outflow[t-t0]
indicates the rate of change of the particular state variable. The behavior of inflows and
Fig. 5.21 A typical dynamic system Adapted from Ogata (1992)
S1, S2, …, Sn
u1
u2
um
.
.
.
.
.
.
f1(S1, S2,…, Sn; u1, u2,…,um)
f2(S1, S2,…, Sn; u1, u2,…,um)
fr(S1, S2,…, Sn; u1, u2,…,um)
(5.13) t
t)u ...,u u S ...,S (SSm21n21j
=
;,,;,,f
t
315
.0X
Y
outflows can be exemplified by inventories. Final inventories at the end of a period of
time are a function of the initial inventory, the new inventory added and the amount of
product that has been consumed over the period of time under analysis.
The behavior of a stock can be expressed by the following equations:
Equation 5.14 shows the accumulation of the stock between times t0 and t1 while
equation 5.15 expresses the rate of change of a given state variable at any time t, which is
equivalent to the net inflow of the stock.
System dynamics captures changes over time by the simulation of circular
changing behaviors where variables influence and respond to each other. System
dynamics expresses causality in terms of positive or negative loops. A positive loop
expresses a positive feedback into a variable. A positive feedback of variable X into
variable Y such that X →+ Y implies that
It is possible to show that a positive loop causes an exponential growth of a state
variable S. A state variable is defined by a stock. In addition, the state variable S is a
function of t, such that S = f(t). A system dynamics model is said to be of order n if it has
n state variables (n stocks) to describe the state of the system. On the other hand, it is
linear if the rate equation or net system is a linear combination of the state variables.
Stock
OutflowInflow
Inflow[t-t0] + Stock[t0] –
Outflow[t-t0]
Fig. 5.22 Stocks and flows
(5.15) )Outflows(tInflows(t)dt
dStock
(5.14) )Stock(t]dtOutflow(t)[Inflow(t)Stock(t)1
0
t
t0
−=
+−=
316
Define S = (S(t)1, S(t)2, …, S(t)n) as the vector of n state variables describing the state of
the system at time n. Let ai and bj be constants. Thus, the rate equation or net inflow of
the system can be expressed as:
Assume a first-order linear system with a positive feedback loop. In this case, the
rate equation can be expressed as:
Let S0 be the initial stock for t0, then solving for S, it is possible to express the net
value of the stock at any time t as:
S(t) = S0egt (5.18)
Equation 5.17 shows an exponential growth of the state variable. If the system is
left without any control, the state variable will grow forever. To limit this growth it is
necessary for a dynamic system to present a damping or balancing behavior that will
equilibrate this exponential growth. In real life, this balancing behavior is represented by
a policy resistant system where “policies are delayed, diluted, or defeated by the
unforeseen reactions of other people or nature (p.3).” The balancing behavior shows an
exponential decay and is generated by a negative feedback loop such that
implies that
For a first-order linear negative feedback loop system:
Once more, solving for S, defining S0 the state for t0:
(5.17) gt
S0=
YX −→
.0X
Y
(5.19) ct
S0−=
==
+=
m
1j
jj
n
i
ii ubSat
S
1
(5.16)
317
S(t) = S0e-ct (5.20)
The equilibrating effect of the negative loop can be assumed as :
S(t)* = S0egt - S0e
-ct (5.21)
The resulting adjusted effect S* is shown in figure 5.22, where the exponential is
somewhat controlled by the opposing effect of the two loops. The behavior of S(t)* is a
function of the variables g, c and S0 that are determined by the initial diagnosis of the
organization.
5.6.1 Components of the Simulation Model
To explore the formal expressions that govern the causal sub models presented
above, several of these sub models were structured to conduct a dynamic simulation. The
sub models selected are those corresponding to proposition1 and propositions 7, 8 and 9.
Theses sub models are shown in figure 5.24 (which repeats figures 5.9 and 5.14).
Exponential decay
Exponential growth
Adjusted response S(t)*
Fig. 5.23 Adjusting behavior of positive and negative
feedback loops
318
According to figure 5.25 once the need for change appears, it influences the
innovation and change forces that govern the change process, which concludes with the
desired outcomes. The need for change is influenced by the difference between
perceptions and expectation among management and employees. Both, employees and
management perceive change in response to the current outcomes. On the other hand, the
expectations of the change process are a function of the forces that are triggering change.
The difference between these expectations and perceptions create more need for change.
Innovation and Change
forces
Need for
change
Difference between employees and
management perceptions and expectations
Difference between perceptions and
expectations in management
Fig. 5.25 Organizational outcomes as function of innovation and
change forces, need for change and perceptions and
expectations
Organizational
outcomes
Innovation and Change
forces
Need for
change
Figure 5.24 Causal relationships for propositions 1, and 7, 8 and 9
Perceived change
in t ransformationalvariables
Expected change intransformational
variables
Perceived change intransact ional
variables
Employee'spercept ions
Employee'sexpectat ions
Management 'spercept ions
Management 'sexpectat ions
Organizat ionaloutcomes
Need forchange
Innovat ion andChange forces
+
+
++
+
Expected changein t ransact ional
variables
+
+
+
+
+
+
+
+
Difference betweenpercept ions andexpectat ions inmanagement
Difference betweenpercept ions andexpectat ions in
employees
Difference betweenemployees andmanagement
percept ions andexpectat ions
+
+
+
-
-
-
-
Change and
innovation forces
Need of innovation+Transactional
change
Transformational
change
Need for radical
change
++
+
Organizational
outcomes
-+
+
+
+
Organizational
change outcomeResistenace to
change
+
-
-
Delays
319
Figure 5.26 shows the implications of resistance to change on the change process.
As shown, resistance to change is influenced by aspects such as change in
transformational variables, change and innovation forces and previous experiences.
Furthermore, resistance to change delays the process of change. Thus, change is
influenced not only by the effects of forces that trigger it, but is delayed by the effect that
these forces had over previous experiences.
Figure 5.27 shows the dynamic model resulting from integrating the two causal
models shown in figure 5.24. External and internal innovation forces influence the need
for change and the process of change. External forces influence the need for change by
modifying the perception that the organization has of its environment. Internal forces
influence the process of change by participating in the different activities involved in the
change processes. The current need for change is affected by the difference between the
perception that individuals have about the current condition of critical variables within
the organization, and the conceived preferred condition that they have about them. If the
preferred level is higher than the current level of the variables, there is an indication that
Fig. 5.26 The effect of resistance to change on change outcomes
Organizational change
outcome Resistance to change
Need for radical change
Organizational change
outcome
Delays
Resistance to change Need for radical change
Change and innovation forces
Transformational change
Organizational change outcome Resistance to change
320
a need for change exists. The larger the gap between the preferred and the current
conditions, the larger the scale of change needed.
Figure 5.27, shows the variable need of change as a state variable. It defines the
accumulation of need for change in the organization through time. This need for change
can grow indefinitely if no actions are taken. Internal innovation forces as mentioned
above motivate these actions. Additionally, the effect of past results and the level of need
for change increase the current need for change. However, the decisions over the process
and the results of the change processes are delayed due to resistance to change
The different variables used in the model are defined in table 5.4, including the
potential measures used to represent them. As seen, most of the measures are based on
regression equations derived from the data collected during the case study at the agency.
Fig. 5.27 Integrated dynamic model
Need for change
through timeProcess of changeCurrent need for
change
Outcome of the
change process
Perceived level of
transactional varibles
as today
Perceived level of
transformational variables
as today
Preferred level of
tranformational variables
Preferred level of
transactional variables
Difference between the
preferred and perceived level of
tranformational and
transactional variables
Competitors
Government
Similar agencies
Players
Retailers
ManagementEmployees
Delayed excecution
of the processesDelayed outcomes
321
Despite the fact that for this research the lack of sufficient data, the high
variability of the responses and the collinerarity among variables makes regression
models of low validity for the prediction of causal effects; they were used as a first
attempt to model the dynamic relationships and behaviors present in organizational
change. In addition, random numbers generated using the empirical distributions shown
in table 5.5 model the effect of the different change and innovation forces over the need
and process of change. Responses on the extent to which each force influences the
change process at the Agency vary from 1 to 5 based on a Likert scale. Since the
responses are discrete and the probability distribution that governs these responses is not
known, empirical distributions were developed after a frequency analysis of the responses
for the different forces.
Finally, table 5.6 shows the equations used in the dynamic model developed in
this section. These equations are used to obtain simulated behaviors of the need for
change in different scenarios, as explained in the next section.
5.7 Simulating Organizational Change
Vensim ® PLE was used to perform the simulation of the model. The Personal
Learning Edition of Vensim® is “a visual modeling tool that allows to conceptualize,
document, simulate, analyze and optimize models of dynamic systems (Vensim® PLE
user’s manual, p. 3.)” The simulation was performed under the following conditions:
- State variable: the variable to be analyzed in the simulation study is need for
change through time. The initial condition for the variable is 3, and is defined as
322
the average of the responses for the need for change as detected from the case
study and explained in table 5.4.
Table 5.4 Variable definitions and potential measures
Variable Definition Potential Measures
Process of change
They are the processes tending to achieve
organizational change. Among them are
organizational restructuring, organizational
redesign, process modification, process
redesign using continuous, incremental or
radical change processes.
The regression equation that models the
different processes of change as a
function of the need of change. Process
of change is defined in the questionnaire
based on a range going from continuous
to radical. The delay in the decision-
making of the execution of the change
process is represented by the function
DELAY defined in Vensim ® PLE.
Please refer to the manual for more
information.
Outcomes of the change
process
They are the expected results of any change
initiative. The expected outcomes can be
improved. Outcomes can be improving
customer services, shorter cycle times, better
quality of services and products, improved
organizational responsiveness, costs
optimization and new products and services,
among others.
Regression equation of results vs. process
of change. The delay in the decision-
making and results is represented by the
function DELAY defined in Vensim ®
PLE. Please refer to the manual for more
information.
Innovation and change
forces
They are the forces that pressure and motivate
change. They can be external and internal
forces, and can be defined as coming from
customers, market, similar institutions,
government, employees and management,
among others.
The effect of each of the individual
forces is represented by a random number
generated based on the empirical
distribution that govern each variable.
Need for change
It is the existing perception among the
members of the organization that change is
needed in some way. It is due to poor
performance, lack of effectiveness, lack of
consistency among others. The variable has
two components. Current need for change,
which models the need of change at any point
of time. Need for change through time is a
state variable that models the perceived need
for change of the organization through time
The current need for change is modeled
by the regression equation of the need of
change assessed by the open questions of
the questionnaire vs. perceived and
expected change in transformational and
transactional change, and the effect of
previous results. A scale from 1 to 5 was
used to determine the level of need for
change, being 1 the lowest and five the
highest.
The change of time through time is
modeled based on the definition of stocks
and flows as the difference between
current need and process plus the
accumulated need for change.
Perceived level of
transformational and
transactional variables
It is the perception that individuals have on
how core and operational variables are
currently at the organization.
It is defined by the average of the
perceived level of transformational and
transactional variables as of today.
Preferred level of
transformational and
transactional variables
It is the perception that individuals have on
how core and operational variables should be
at the organization.
It is defined by the average of the
preferred level of transformational and
transactional variables.
Difference between
preferred and perceived
levels of transactional
and transformational
variables
It is the existing gap between the preferred and
the perceived levels of critical variables in the
organization. The larger and positive the
difference, the greater the existing need for
change.
The average of the differences of
preferred and perceived levels of
transactional and transformational
change.
323
- Units: the different measures are dimensionless since they represent assessed
levels of dimensionless variables.
- Time units: the simulation time unit is months. A 100-month horizon was selected
to be consistent with the fact that radical change projects can take between 6
months to 3 years (Skarke, et al., 1995), and to have more flexibility in the use of
delays and their effect on time.
- Scenarios: different scenarios were developed to compare simulations and the
effect of the different scenarios on the need for change through time. The
scenarios selected include an ideal situation where no forces and delays are
considered and different cases changing the effect of forces and delays.
The next sections cover the different scenarios used for the simulation experiment
and the corresponding analysis. The reader is reminded that the equations that govern the
model are only for the purpose of the experiment and that the results are applicable to the
specific situation of the Agency. The information used to develop these equations is
based on the data gathered during the case study.
Table 5.5 Empirical cumulative probability distributions
Perceived
extent
External and internal change and innovation forces
Competitors Government Similar
Agencies Management Employees Players Retailers
Cumulative probabilities
1 0.145 0.056 0.029 0.014 0.224 0.000 0.067
2 0.391 0.125 0.086 0.042 0.474 0.176 0.187
3 0.652 0.306 0.586 0.236 0.750 0.635 0.653
4 0.826 0.514 0.871 0.611 0.868 0.811 0.840
5 1.000 1.000 1.000 1.000 1.000 1.000 1.000
324
5.7.1 The First Scenario: the Base Model
The first scenario that was modeled corresponds to a closed and ideal system. In
this case, there are no effects from external or internal forces and there are no delays.
Table 5.6 Equations for the simulation model
Variable Potential equations
Process of change 3.36 - 0.216*Management + 0.227*Employees +
0.142*Need for change
Outcome of change process
3.52+0.037*Process
Innovation and change forces
Individual random functions depending on the characteristic
empirical cumulative distribution that governs each force, i.
e., for competitors: IF THEN ELSE(RANDOM
UNIFORM(0,1,0) <=0.145,1,IF THEN ELSE( RANDOM
UNIFORM(0,1,0) <=0.391 ,2,IF THEN ELSE(RANDOM
UNIFORM(0,1,0) <=0.652,3,IF THEN ELSE
(RANDOM UNIFORM(0,1,0) <=0.826,4,5 ) ) ) )
Need for change
3.37 + 0.135*Result+0.071*Total difference-
0.147*Competitors+0.066*Government+0.088*Similar
agencies-0.455*Players+0.273*Retailers+*need for change
through time. is a scaling factor for the feedback effect of
the need for change and can be explained as the weight of
this effect on the current need for change.
Perceived level of
transformational and transactional
variables
Transf t = 2.37+0.112*Result
Trnst t = 2.88+0.0401*Result
Preferred level of
transformational and transactional
variables
Transf p = 3.86+0.054*Process
Trnst p = 3.58+0.124*Process
Difference between preferred and
perceived levels of transactional
and transformational variables
((Transf p-Transf t)+(Trnst p-Trnst t))/2
325
Furthermore, the model assumes that there is no feedback effect from pre-existing
conditions for need for change.
As seen from figure 5.28, the need for change grows from its initial condition to a
point where the need for change stabilizes. This is true for this system since no external
variable or delay is involved in the simulation and the change over time is due only to the
behavior of stocks over time (exponential growth).
5.7.2 The Second and Third Scenarios: Introduction of Innovation and
Change Forces
To observe the influences of innovation and change forces over the need for
change this section shows two different situations. The first is the case when only internal
forces that influence the process of change are integrated. In this case, the effects of
management and employees are included in the model.
Fig. 5.28 Behavior for Need for Change through time
Need for change
6
5
4
3
2
0 10 20 30 40 50 60 70 80 90 100
Time (Month)
Need for change : run_1
326
Figure 5.29 compares the situation for the first scenario (run_1) depicted by line 2
and the scenario when only internal forces are incorporated (run_2) depicted by line 1. As
shown, the inclusion of these factors increases the need for change, which agrees with the
experiences gathered through the case study. Decisions considering only internal
implications and managerial needs would produce, in the long term, the undesired effect
of increasing dissatisfaction and lack of motivation, which in turn, creates a greater need
for change.
The second case is shown in figure 5.30 and depicts the integration of all the
internal and external innovation and change forces. The simulated behavior depicted by
line 1 (run_3) shows that if all the change and innovation forces are considered the effect
over the need for change is of reducing the total need over time to a value that, even
though not as stable as the two other simulations, is smaller, at any time, than the
different values obtained previously.
Need for change
8
6
4
2
0
22 2 2 2 2 2 2 2 2 2 2 2 2 2 2
1
11
1 1 1 1 1 1 1 1 1 11 1 1
0 10 20 30 40 50 60 70 80 90 100
Time (Month)
Need for change : run_2 1 1 1 1 1 1 1 1 1 1 1
Need for change : run_1 2 2 2 2 2 2 2 2 2 2 2
Fig. 5.29 Need for change if internal forces are included
No forces
Only internal forces
327
Once more, the simulated behavior agrees with the experiences from the Agency.
The interviewees and participants on the survey agreed that it is necessary to consider not
only employees and management needs and priorities, but also it is required to consider
other environmental elements in the implementation of any change program. Moreover,
the literature (e.g., table 5.1) also agrees with the fact that external and internal factors
must be considered to successfully implement change, hence diminishing the need for
change in the organization.
5.7.3 The Fourth and Fifth scenarios: Introducing Delays in Actions
An additional important effect to be considered is the impact that the delays in
policies and actions can cause over the system. Figure 5.31 depicts the effect that
different delay lengths in initiating the process of change have over the behavior of need
for change through time. Curve 2 (run_4) depicts the situation when the delay in
Fig. 5.30 Need for change when all the innovation and
change forces are incorporated
Need for change
8
6
4
2
0
33 3 3 3 3 3 3 3 3 3 3 3 3 32
22
2 2 22 2 2 2 2 2
2 2 2 2
1 1 1
11
1 1 11 1 1
1 1 11 1
0 10 20 30 40 50 60 70 80 90 100
Time (Month)
Need for change : run_3 1 1 1 1 1 1 1 1 1 1 1
Need for change : run_2 2 2 2 2 2 2 2 2 2 2 2
Need for change : run_1 3 3 3 3 3 3 3 3 3 3 3
Internal and external forces included
Only internal forces included
No forces
328
implementing a change project is 10% of the simulation time. Curve 1 (run_4a) shows
the simulation when the delay is 25% of the simulation time. In both cases the delay in
obtaining results was assumed to be doubled. As seen, the simulated response shows that
need of change increases as the delay increases. In addition, the curves show a cyclic
behavior where the need of change increases every period. This behavior is better shown
in figure 5.32
Need for change
40
28.5
17
5.5
-6
11 1 1 1
11
1
11
1
1
1
1
1
0 30 60 90 120 150 180 210 240 270 300
Time (Month)
Need for change : run_4 1 1 1 1 1 1 1 1 1 1 1
Fig. 5.32 Increasing trend of need for change when delays are present
Fig. 5.31 Effect of delays in policies regarding the process of change
Need for change
8
6
4
2
0
3 3
33
3 3 33 3
3
3 3 3 3 32 2 2
2 2
2 2 2
2
2
22
2 2 22
1 1 1
1 1
1
11 1 1 1
11 1
1 1
0 10 20 30 40 50 60 70 80 90 100
Time (Month)
Need for change : run_4a 1 1 1 1 1 1 1 1 1 1 1
Need for change : run_4 2 2 2 2 2 2 2 2 2 2 2
Need for change : run_3 3 3 3 3 3 3 3 3 3 3 3
Delay 10%
No delay
Delay 25%
329
The delay in implementing change and obtaining results generates a combined
effect. At the beginning it seems that the need for change diminishes due to the
implementation of change projects. On the other hand, the delay in the results makes the
need for change jump, mainly due to the effect of the selected change process on the
preferred level and the delayed results on the perceived level of the critical variables.
Figure 5.33 shows the effect of increasing the effect of employees over the model.
As seen, the introduction of more employees’ actions reduces the effect of the delays
over the need for change. The experiences obtained in the Agency indicate that increasing
employees’ participation over the implementation and execution of change projects
reduced uncertainty and balanced the effects of delays in management decisions
regarding change objectives. Employees felt as if the projects were their own initiative
and were willing to participate with more enthusiasm and effectiveness.
Fig. 5.33 Corrective actions by increasing the effect of employees
on the model
Need for change
8
4
0
-4
-8
2 2 22 2
22 2 2 2
22 2 2
22
1
1
11
11
11
11
11
1
1
1
1
0 10 20 30 40 50 60 70 80 90 100
Time (Month)
Need for change : run_7 1 1 1 1 1 1 1 1 1 1 1
Need for change : run_4a 2 2 2 2 2 2 2 2 2 2 2
Employees’ participation
330
5.7.4 The Sixth Scenario: The Effect of Existing Need of Change
A further analysis of the model includes the effect that the accumulated need for
change has over the current need for change. To study this effect, a feedback mechanism
connecting the current need for change and the accumulated need for change was added.
This feedback adds a certain amount of the accumulated need to the current situation
based on a constant R. The value of indicates the degree to which the
accumulated need for change influences the current level of need. Thus, a positive can
be seen as how much weight the accumulated need has over the current need. For
example, = 0.05 indicates that 5% of the accumulated need for change is included in
the current need. The effect of the constant over the model can be related to the effect
of accumulated frustration of individuals on the organization. The effect of frustration
can be added to the current experiences to increase the need for change and to increase
the effect of resistance to change on any new initiative attempted (Larsen and Lomi,
1999).
Fig. 5.34 Effect of feedback of accumulated need for change
Need for change
10
7.5
5
2.5
0
3 33 3
3 3 3 3 3 33 3 3 3 3
2 2 2
2 2
22
2 2 22
2 2 22
1
1
1
1
0 10 20 30 40 50 60 70 80 90 100
Time (Month)
Need for change : run_6 1 1 1 1 1 1 1 1 1 1 1
Need for change : run_5 2 2 2 2 2 2 2 2 2 2 2
Need for change : run_3 3 3 3 3 3 3 3 3 3 3 3
= 10%
= 5%
= 0
331
Figure 5.34 depicts the effect of over the simulation. In this case, line 3 (run_3)
depicts the original scenario defined in figure 5.30 with all the innovation and change
forces included. Line 2 (run_5) corresponds to the case when delays are included (run_4a
on figures 5.31 and 5.33). Line 1 (run_6) depicts the current need for change after being
influenced by an of 10%. The simulation has an uncontrollable exponential growth
after 20 time units (months), hence a small portion of accumulated need has an
exponential effect on the current need.
Figure 5.35 shows the responses of a simulation of the same experiment if the
effects of management and employees are modified and included on the system.
Increasing employees’ participation to 50% and decreasing management influence to 5%
produced a desired control effect. Line 2 (run_7) shows the simulation for the first 20
time units for the scenario depicted in run_6. Line 1 (run_9) shows the effect of
modifying management and employees’ effect over the simulation model. The need for
Need for change
20
15
10
5
0
2 2 2 2 2 2 22 2
22
2
2
2
2
2
1 1 1 1 1 1 1 1 1 1 1 1 1 1 11
0 2 4 6 8 10 12 14 16 18 20
Time (Month)
Need for change : run_9 1 1 1 1 1 1 1 1 1 1 1
Need for change : run_7 2 2 2 2 2 2 2 2 2 2 2
Fig. 5.35 Correcting effect of empowerment and management
= 10%, no correcting
effect
= 10%, correcting
effect of management
and employees
332
change through time tends to decrease thanks to the modified effect of management and
employees despite the effect of the feedback .
The experiences at the Agency corroborate the results of the simulation. The
frustration accumulated due to past experiences and discomfort would diminish if
employees are empowered and management gives them more flexibility in their actions
and decisions. Therefore, the simulation model corroborates that an equilibrated
participation of management and employees in the change process is essential to
successfully accomplish organizational transformation.
5.8 Validation and Generalization of IMOC
The objective of this chapter was to present the conceptual foundations and the
different elements and levels that compose the Influence Model for Organizational
Change - IMOC. In addition, a simulation experiment was performed to verify if the
relationships suggested by IMOC can be supported. Two aspects are necessary to
analyze the validity and possibility of generalization for IMOC.
5.8.1 Validation of IMOC
Barlas (1996) affirms that although the majority of researchers see a model as an
objective representation of a real system, it is possible to see a model as one of many
possible ways to describe a system. Thus, it is not possible to posit that a model is correct
or incorrect once it is compared with empirical facts from reality since the modeler’s
views and ideas are present in it.
333
Vennix (1996) defines the validation of a model as the “degree to which the base
model input: output relations map on those of the real system (p. 323)”. Traditional
validation is based on the predictability, historical independence and deterministic nature
of the problems. On the other hand, system dynamics models have the goal of describing
complex social systems and for that reason they are incomplete, relative and partly
subjective (Klabbers, 2000); hence traditional procedures are not suited for validating
them. The usefulness of the model rather than aspects such as elegance, realism or
reproducibility should lead the validation process of a system dynamics model (Taylor
and Karlin, 1994).
As suggested by Klabbers (2000) the validation of IMOC should cover the
validity of the internal structures of the model and the validity of the system behaviors.
Finally, it is necessary to study the usefulness of the model in terms of possible solutions,
ideas and actions to successfully implement organizational change.
Recalling the information presented in previous chapters of this document, IMOC
is built on propositions that were founded on theoretical concepts supported by different
sources found in the literature. Moreover, IMOC is founded on a series of
multidisciplinary concepts and tools described at the beginning in this chapter. A case
study was conducted to verify these propositions and to gather information, observations
and experiences that would help to develop the causal relationships that govern IMOC.
Finally, a series of causal sub-models were developed based on the relationships and
experiences from the case study. Therefore, the internal structures that support IMOC are
validated by theoretical concepts and tools, and additionally by empirical findings and
experiences.
334
The validity of IMOC’s behaviors is supported to some extent by a more detailed
dynamic simulation model constructed in the previous section. A series of simulation
experiments were conducted to ensure that the relationships developed could explain
some behaviors that were found during the case study. The dynamic model lacked
comprehensiveness due to the complexity of the relationships and the scarcity of
information from different sources. Nonetheless, the simulation experiments confirmed
some of the strategies, actions and policies that are recommended by the literature to
increase the likelihood of success of a radical change initiative. More specifically, the
results from the scenarios modeled confirmed the importance of considering the different
dimensions of the model - human, environmental and operational- and to integrate them
in more efficient and holistic administrative and strategic policies in the organization. In
addition, the simulation showed the importance of having a feedback system that could
measure and control the different dimensions of the organization in a timely manner. It is
necessary to develop and apply measures that integrate the objectives of the organization
with the objectives of the change process to effectively assess the results of the different
change initiatives. Moreover, these measures must be capable of assessing the critical
core and operational variables necessary for a successful change.
Finally the usefulness of the model can be related with the two previous factors –
internal structures and system’s behaviors - given the possibility of deriving actions and
policies from IMOC. If a new BPR project were implemented at the Agency the
following aspects should be taken into consideration in order to improve the likelihood of
success:
335
- Perform a diagnostic study of the organization considering not only the current
situations but also management and employees’ expected or preferred situations. The
information from the diagnostic study would define the organization’s initial situation
and would help in developing strategies, goals and activities to improve, if necessary,
some of the variables assessed by the study. For the Agency, this initial condition
would have provided with the assessment of transformational and transactional
variables, perceptions about previous projects and demographic information that
increases understanding of where the organization is in terms of the profile of its
human resources.
- Clearly define the goals and objectives of the change initiative and develop the
necessary metrics to assess the results. To assess the results of the change initiative, it
is necessary to define and use specific metrics that are related to the goals and
objectives of the organization. These metrics should provide an integrated
performance view of the different dimensions of the organization, i. e., operational,
human and environmental. Furthermore, these metrics facilitate the comparison of the
results of the different stages of the change initiative.
- Define the means for feedback and follow-up for the projects. It is necessary to
monitor and assess the partial results of the projects. Additionally, projects do not end
when the change has been implemented. A follow-up strategy is necessary to detect,
analyze and correct deviations from the original expectations. The feedback and
follow-up mechanisms use the different metrics mentioned above as guidelines in the
control of the different change projects.
336
- Communicate the need for change. Communication, coordination and integration of
working units are essential to increase the likelihood of success of any change
initiative, as perceived in the case study. Participants in the change projects and
stakeholders must know the reasons for implementing change; otherwise their effort
might not be directed toward the expected objectives. Moreover, the partial results
detected by the feedback mechanisms have to be communicated to better fine tune
and implement the new systems, activities and climate due to the change initiatives.
- After defining the processes that need review or redesign, establish a task force
composed of people from the different working units affected by the change
initiative, to develop an implementation plan. Participation of individuals from the
affected areas in the change process is influential in determining the effect of the
proposed changes on the operation, administration and power structure of the
different divisions involved in the initiative. Furthermore, the input from the team
members would help develop change strategies and activities that might reduce
uncertainty and resistance to change.
5.8.2 Generalization of IMOC
Up to this point the development of IMOC allows the verification of the change
processes at the Agency and the prediction results based on previous information from
the organization. In addition, IMOC allows developing strategies, tactics and internal
policies that can help in achieving successful change. The next step is to generalize the
findings and concepts of IMOC to different settings.
337
To extend IMOC’s validation to more general settings, a meta-study of the results,
methodologies and critical variables in organizational change and innovation is
necessary. Bal and Nijkamp (2001) suggest the use of a meta-analysis that will integrate
knowledge from different sources and transfer it; hence it is possible to conform the
information to common rules and theories. According to their definition a meta-analysis
consists of a series of studies and investigations from the literature and organizational
settings that will provide sufficient data to analyze complex societal problems and to
validate common theories and problem solving methodologies.
Meta-analyses on organizational change are not new. For instance Damanpour
(1991) performed a meta-analysis of different case studies reports and articles to find
causes and moderators of innovation adoption. This study has been used as fundamental
for other studies and more specific research on organizational change (e.g., Barnett and
Carroll, 1995, Armenakis and Bedeian, 1999)
The proposed meta-analysis would include a longitudinal and a cross-sectional
study of different sectors and types of organizations within the sectors. These studies
would consider different aspects to help determine expressions, relationships and
conditions to validate the different propositions of this study under specific settings. The
different levels and sub-models of IMOC have to be tested under these settings to find
three elements: commonalities, differences and uniqueness of the individual
organizations, sectors and conditions.
Figure 5.36 shows the process concerning the meta-analysis. Through a series of
case studies information is collected regarding demographics, critical variables,
outcomes, performance measures and previous experiences with change. The case
338
Government
State
Federal
Local
Profit
Lotteries
Consulting
Transportation
Geo
gra
ph
ic l
oca
tion
Siz
e
Ag
e
Nonprofit
Regulatory
Service
Military
Justice
Education
Private
Manufacturing
Automobile
Chemical
Defense
Electronic
Pharmaceutical
Service
Financial
Health care
Food and Lodging
Entertainment
Transportation
Consulting
Computing and Data
Processing
Education
Information from the case studies:
Demographics
Change experiences
Change Processes
Critical Variables
Performance measures
Outcomes
Commonalities
Differences
Uniqueness
organizational
outcomes
change in performance
measures
managerial
decisions
organizational
processes
-
+
+
+
organizational
change process
need forchange
change and
innovation forces
+
+
+-
IMOC semantic model
Change in
Performance
Measures
Need for
change
Change
outcomes
Organizationalchange
processes
Change intransformational
variables
Radical Change
Innovation
Change in
transactional
variables
+
+
++
-
-
+
+-
+
+
Change and
innovation
forces+
+
+
-
IMOC control view
Perceived change
in transformationalvariables
Expected change intransformational
variables
Perceived change intransactional
variables
Employee'sperceptions
Employee'sexpectations
Management'sperceptions
Management'sexpectations
Organizationaloutcomes
Need forchange
Innovation andChange forces
+
+
++
+
Expected changein transactional
variables
+
+
+
+
+
+
+
+
Difference betweenperceptions andexpectations inmanagement
Difference betweenperceptions andexpectations in
employees
Difference betweenemployees andmanagement
perceptions andexpectations
+
+
+
-
-
-
-
Propositions 7, 8, 9
Innovation and
change forcesChange in
transformationalvariables
Change intransactional
variables
Organizational
outcomes+
+
Tenure time
-
+
Need for change
+Organizational
change process
+
+
+
Resistance to
change -
-
Propositions 10, 11
Need for
changePressure to change
Innovation and
change forcesEnvironmental
forces
Internal forces
Similar
organizations
+
+
+
+
managerial
decisions
change in
organizational variables
Change in transactional
variables
Change in transformational
variables
+
++
++
+
+-
Propositions 2, 3,4
Need for
changePressure to
change
Innovation andchange forces
+
Managerialdecisions
change inorganizational
variables
+
Change intransformational
variables
Change intransactional
variables
Organizational
outcomes
+
+
+
+
+
Propositions 5, 6
Proposition 1
Change and
innovation forces
Need of innovation+Transactional
change
Transformational
change
Need for radical
change
++
+
Organizational
outcomes
-+
+
+
+
Organizational
change outcomeResistenace to
change
+
-
-
Delays
Tim
e
Fig. 5.36 IMOC validation meta-analysis
339
studies should be cross-sectional, considering different areas, processes and function
within the different organizations. At the same time, the case studies should be
longitudinal, considering the variation of the information through time to effectively
assess change. The meta-analysis should consider organizations in different sectors and
different sizes, locations and age. The information collected through these case studies
should be compared with IMOC’s sub-models to validate, reconstruct or complete them.
The analysis should provide the necessary information to complete the different
expressions shown throughout this chapter, helping define the type and form of the
expressions, the constants in them, and their relationship with time to represent a more
realistic model. In addition, it should help in finding the commonalities and differences of
the change processes among sectors. Moreover, the study should help with discovering
the unique characteristics of the different change processes and comparing them to see
the possibilities of including them in the final model.
The final result should present IMOC as a series of layers serving as shells for
describing the change process in different settings and environmental conditions, but
flexile enough to accommodate the particularities and uniqueness of the change process
in specific types of organizations. The dynamic simulation model should have the
capability of adjusting to the different conditions presented in the organizations, with
expressions and relationships that could represent the causalities between the model’s
variables.
IMOC is not a panacea to solve the problems of implementing successful
organizational change. The purpose is to create an integrated model that can help in
predicting responses and actions to achieve change but does not perform the activities or
340
provide the willingness, commitment and leadership necessary to succeed. IMOC is part
of the tools that can be used to develop strategic and internal policies to create change but
needs to be used in concordance with objectives and plans and not as an isolated
instrument for change.
The next chapter of this document summarizes the accomplishments of this
research and delineates future research activities promoted by this endeavor.
341
Chapter 6
Conclusions and Future Research
6.1 Introduction
Organizational change can be described as a series of activities oriented towards
modifying behaviors and structures within the organization. This series of activities is
interconnected internally and externally and is affected by human, operational and
environmental factors that dynamically influence decisions and processes in the
organization. This research effort was born with the main objective of using
multidisciplinary knowledge and tools to explore a new model for organizational change
combining the dynamic aspects of change and innovation and the causal relationships that
govern an organization’s activities to promote and implement change. More specifically
the goals of this research were:
a. To develop and explore a new model for organizational change called The
Influence Model for Organizational Change that dynamically links the content,
context and processes of change with the organizational outcomes during and
after the change initiatives have been conducted.
b. To conduct a case study with the objective of describing and explaining the
change processes that have been attempted at the Agency and to use data,
information and conclusions to corroborate, reject or explore different aspects that
are linked to the different propositions on which IMOC is based.
342
c. To generate a series of assertions explaining the experiences and conclusions
found in the case study that may be extended, for future research, to other entities.
The next sections of this chapter are dedicated to expressing the conclusions and
future research derived from this work in terms of the objectives and goals presented
above.
6.2 Summary of Results
The main conclusion derived from this research effort is a disagreement with what
Lewin proposed in the early 1950s, that change is a discrete series of activities towards
the achievement of with a unique goal. On the contrary, as proposed by different authors
(e.g, Burke, 1992, Burke, 1994, Pettigrew, et al., 2001) and as demonstrated by the case
study conducted in this research, change can be defined as a complex set of elements,
process and related activities, that evolve as time advances. The results of a particular set
are multidimensional and consist of particular and unique behaviors that continually
serve as input to it. Change does not occur individually, but as a parallel series of
activities competing for limited resources and strongly influenced by human attitudes and
beliefs.
Thus, it is possible to argue that in order to model change it is necessary to view it
as a system not as a process. IMOC is presented in this research effort as an attempt to
model the system of change. To develop IMOC, eleven propositions were established and
verified through a case study in a state agency. Table 6.1 shows the results of the
proposition validation.
343
Only two of the propositions could not be supported by the case study. It is
possible to argue that it was mainly because of the lack of definitions for success,
newness and objectives and goals of the change program. Despite the fact that people
Table 6.1 Summary table: Propositions validation
Proposition 1
Radical change motivated by innovation is more difficult to implement than
radical change motivated by strategic or environmental reasons
:
Partially
supported
Proposition 2
Environmental and Internal forces will motivate radical change, while
Institutional forces will induce innovation.
:
Supported
Proposition 3
A need for change will induce a need for innovation.
:
Supported
Proposition 4
Innovation will generate a change in transactional variables
:
Partially
supported
Proposition 5
Radical change will generate change in transformational variables.
:
Partially
supported
Proposition 6
Transformational variables will change in a positive direction even if the
change initiative fails.
:
Not
supported
Proposition 7
The success of a radical change initiative will be negatively influenced by the
differences between employees’ perceptions and expectations of the critical
success variables influencing the change process
:
Partially
supported
Proposition 8
The success of a radical change initiative will be negatively influenced by the
difference between employees’ perceptions and management expectations of
the different critical success variables influencing the change process.
:
Partially
supported
Proposition 9
Groups of people with similar perceptions and expectations of the critical
success variables will positively influence radical change.
:
Not
supported
Proposition 10
Length of employees’ tenure time at the Agency will positively influence the
adoption of transactional change.
:
Partially
supported
Proposition 11
Length of employees’ tenure time at the Agency will negatively influence the
344
want change, they did not know what was planned and how to do it well in advance to
successfully and efficiently accomplish it.
IMOC proposes the need for an initial diagnosis to define the conditions on which
the change process is going to be based and to compare final results. In addition IMOC
proposes the need of a feedback and control system to continuously monitor the process
of change and to trigger corrective actions as soon as they are needed or even in a
proactive manner, predicting possible flaws before they occur.
As part of the feedback and control system, a complete set of performance
measures is needed. The measures should be in accordance with the objective of the
organizations and should be developed so they can be used across the organization,
providing information to all levels and to all units of the firm. The measures have to be
capable of integrating the different dimensions that are affected and that affect change –
human, operational, environmental- and should be capable of measuring change through
time. Finally, information technologies are necessary to collect, manage and report the
information needed and provided by the performance measures to the different levels and
responsibility centers throughout the organization.
IMOC supported the fact that it is necessary to know and understand the different
forces that motivate and trigger change. Considering these forces in the change process
should help in controlling the future need for change and should be part of the proactive
vision that every organization should have. It is equally important to consider the
feedback effect from previous experiences and the delays in deciding and implementing
change processes. The feedback effect from previous experiences increases resistance to
change to such a degree that the need for change becomes so extensive that it goes out of
345
control, generating a crisis within the organization. It is necessary to diminish this
feedback effect by motivation, training and communication to minimize its effect on the
organization. Delays in the decisions and implementation of the change process become
critical as time goes on. If the time between the moment the need of change is detected
and the decision to implement it is large enough, it becomes a triggering factor that can
make the need for change out of control. Time between the decision and the
implementation is also an important factor in decreasing future need for change and as a
result, in increasing the likelihood of success for future change initiatives.
Finally, the effect of internal forces –employees and management- was found to
be of great impact on the change process. IMOC shows that increasing empowerment and
balancing the role of management would help in controlling the process through
decreasing the need for change. Thus, these factors are crucial for the success of a change
initiative.
From the methodological point of view, two aspects are worth mention here, that
change has to be studied from a multidisciplinary approach, and the importance of case
studies. This research demonstrated that it becomes an urgent necessity to integrate
knowledge from social and organizational sciences, management science, engineering
and systems methodologies in order to better understand and explain change. Modeling
organizational change becomes an incredibly complex and immense task that can be
accomplished only with the participation of people from different areas, all of them aware
of the importance of the different areas of knowledge within the modeling process and
with the acceptance that this is a team effort rather than an effort of isolated islands of
knowledge.
346
Case studies provide the knowledge and experiences needed to really understand,
describe, explain and possibly predict change. Through observation, documentation,
surveys and interviews the veil that covers the uniqueness and particularities of different
change processes can be uncovered. This understanding will permit a generalization of
IMOC to be developed with sufficient flexibility to accommodate particularities,
commonalities and differences.
6.3 Contributions of this Research Effort
This research contributes to the fundamental understanding of organizational
change and innovation in two different ways, through fulfilling the need for more
multidisciplinary research, and through developing a new model to explain, analyze and
predict the results of an organizational change initiative. The Influence Model for
Organizational Change uniquely presents change as a complex system of multiple
interrelated tasks and multidimensional variables. The three levels that compose the
model present a different view of change in terms of causal relationships that are
generated from and for the units to the organization as a whole.
The use of system dynamics as a tool to develop and explain IMOC allows the
analysis of the effects that variables, defined in this study and in the literature (e.g., Burke
and Litwin, 1992, Barnett and Carroll, 1995, Armenakis and Bedeian, 1999) as critical
for success in organizational change, have over the change system. In addition, IMOC,
through system dynamics simulation, allows the study of change over time. Change has
to be analyzed not only from the point of view of the discrete influence of critical
variables over the system, but also as time dependant. The incorporation of time in social
347
and organizational studies has been proposed by different authors (Ancona, et al., 2001,
Ofori-Dankwa and Julian, 2001) and is included in IMOC since it is implicit in any
system dynamics model.
Although the literature mentions the need for multidisciplinary research in social
and organizational sciences (e. g., Bal and Nijkamp, 2001, van Dijkum, 2001, Jackson,
2001), there is a lack of studies in organizational change that supported this trend.
Organizational change involves more that single activities oriented towards modifying
specific behaviors. These activities and the results are often taken for granted, assuming
that the participants can clearly define the direction of change (Quattrone and Hopper,
2001). The integration of multidisciplinary concepts and tools to understand
organizational change allows practitioners, participants and researchers to understand the
process of change (Scherer and Smid, 2000). IMOC presents a novel attitude towards
research in engineering and social and organizational sciences. The trend presented in
this research effort is to integrate people, knowledge and ideas in a common ground with
a common objective. It integrates theories, concepts and tools from organizational
sciences, engineering and management sciences to develop a framework for analysis and
understanding of the process of organizational change and innovation from a holistic
perspective.
6.4 Future Research
The refinement, extension and generalization of IMOC are the next steps in future
research. The meta-analysis proposed in Chapter 5 is the framework for the future steps.
This meta-analysis has to be performed using multiple disciplines and tools and is a long-
348
term effort. It should take between 3 to 5 years to accomplish the data gathering and
analysis necessary to complete it. The final objective is to develop an integrated model
that “… is rich enough to be useful, simple enough to be tractable, and that uses data that
can obtain without excessive investment of time or money (Grossman, 2002, p. 43)”.
The meta-analysis should provide enough information to develop more realistic
expressions relating the causal relationships between critical variables, context and
results. The meta-analysis should be able to address issues related to the type and form of
the relationships, their stochasticity and how these relationships behave with respect to
time. For example, it would be important to address the effect of as a measure of
frustration and resistance to change and how this factor influences current needs for
change, i.e., if its effect is additive or multiplicative or if this effect has a stochastic
behavior over time.
Of equal importance, is knowing the relationship between having and using the
right performance measure and the perception of success of the change process. Issues
such as what is a right set of performance measures, and how this rightness affects the
perception of the change processes are important to consider since one of the important
elements proposed by IMOC is the control and feedback systems that should constantly
provide information about performance and results of the change process.
Finally, the use of system dynamics presents an interesting tool to understand
different processes that involve complex human and technological relationships. For
example, modeling multiple tier supply chains with stochastic behaviors could be an
application for system dynamics. Adapting IMOC to this structure would show how
different levels and related variables could affect decisions on policies or strategies.
349
From the conclusions it can be seen that IMOC presents a different approach to
modeling organizational change since it is based on dynamic and causal structures and
analyzes change from a systemic point of view. Much has to be done in this area and it is
time to continue with this effort. Even though surviving change is an important goal in
organizations, the returns on all the effort in time and financial resources dedicated to it
seem to be low (e. g., Lahoti, 2002, Samuelson, 2002). Events in the past years have
demonstrated that organizations are not flexible enough to accommodate change. New
rules and political developments are showing that traditional approaches to change and
adaptation might not be enough to cope with uncertainty (Brant and Isikoff (2002),
Clausen, et al., 2001, Horner, 2002, Gaboury, 2001). As said before IMOC is not the
panacea to cure organizations but is a first step in a more systematic and multidisciplinary
approach to understand change and to increase the likelihood of accomplishing the ideals
and goals of people and organizations.
350
References
A Vision of Change for America (1993) Executive Office of The President of The United
States of America. February 17, H-Doc. 103-49.
Ackerman, F., L. Walls, R. van der Meer, and M. Borman (1999) “Taking a Strategic
View of BPR to Develop a Multidisciplinary Framework,” The Journal of the
Operational Research Society, v. 50, n. 3, March, pp. 195-204.
Agogino, Alice M. (1999) “Management of Uncertainty with Influence Diagrams,”
Working Paper No. 85-0703-6, University of California at Berkeley
(http://best.me.berkeley.edu/~aagogino/me290m/s99/IDES/IDES.html)
Aguinis, Herman (1993) “Action Research and Scientific Method: Presumed
Discrepancies and Actual Similarities,” Journal of Applied Behavioral Science, v. 29,
n. 4, December, pp. 416-431.
Ahire, Sanjay L., and Sarv Devaraj (2001) “An Empirical Comparison of Statistical
Construct and Validation Approaches,” IEEE Transactions on Engineering
Management, v. 48, n. 3. August, pp. 319-39.
Al-Mashari, Majed, and Mohamed Zairi (2000) “Creating a Fit Between BPR and IT
Infrastructure: A Proposed Framework for Effective Implementation,” International
Journal of Flexible Manufacturing Systems, v. 12, n.4, October, pp. 253-274.
Allan, C., J. Sommerville, P. Kennedy, and H. Robertson (2000) “Driving Excellence
Through Environmental Performance Improvements,” Total Quality Management, v.
11, n. 4/6, July, pp. S602-S607.
Amburgey, Terry L., Dawn Kelly, and William P. Barnett (1993), “Resetting the Clock:
The Dynamics of Organizational Change and Failure,” Administrative Science
Quarterly, v. 38, n. 1, pp. 51-73.
Amin, Nadia, Pat Hall, and Mathew Hinton (2000) “Understanding Change: Using the
Pattern Paradigm in the Context of Business Domain Knowledge,” in Henderson,
Peter (Ed.), Systems Engineering for Business Process Change, Springer, New York.
Ancona, Deborah G., Gerardo Al. Okhuysen, and Leslie A. Perlow (2001) “Takin Time
to Integrate Temporal Research,” Academy of Management Review, v. 26, n. 4, pp.
512-529.
Anderson, Phillip (1999) “ Complexity Theory and Organization Science,” Organization
Science, v. 10, n. 3, May-June, pp. 216-232.
351
Anderson, Philip, Alan Meyer, Kathleen Eisenhardt, Kathleen Carley, and Andrew
Pettigrew (1999) “Applications of Complexity Theory to Organization Science,”
Organization Science, v. 10, n. 3, May-June, pp; 233-236.
Anderson-Rudolf, M. Kathryn (1996) A Longitudinal Study of Organizational Change:
How Change in Individual Perceptions of Transformational and Transactional
Constructs Predicts Change in Organizational Performance, Columbia University
Doctoral Dissertation.
Armenakis, Achille, and Arthur Bedeian (1999) “Organizational Change: A Review of
Theory and Research in the 1990s,” Journal of Management, v. 25 n. 3, pp. 293-315.
Armenakis, Achiles A., Stanley G. Harris, and Hubert S. Field (1999) “Making Change
Permanent. A Model for Institutionalizing Change Interventions,” Research in
Organizational Change and Development, v. 12, pp. 97-128.
Arora, Sant, and Sameer Kumar (2000) “Reengineering: A Focus on Enterprise
Integration,” Interfaces, v. 30, n. 5, pp. 54-71.
Bal, Frans, and Peter Nijkamp (2001) “In Search of Valid Results in Complex Economic
Environment: The Potential of Meta-Analysis and Value Transfer,” European
Journal of Operational Research, v. 128, n. 2, pp. 364-384.
Barlas, Yaman (1996) “Formal Aspects of Model Validity and Validation in System
Dynamics,” System Dynamic Review, v. 12, n. 3, Fall, 183-201.
Barlas, Yaman, and Stanley Carpenter (1990) “Philosophical Roots of Model Validation:
Two Paradigms,” System Dynamics Review, v. 8, n. 2, Summer, pp. 148-166.
Barnett, William P., and Glenn R. Carroll (1995) “Modeling Internal Organizational
Change,” Annual Review of Sociology, v. 21, pp. 217-236.
Bauer, Andreas, Gerald Reiner, and Rudolf Schamschule (2000) “Organizational and
Quality Development: An Analysis Via a Dynamic Simulation Model,” Total Quality
Management, v. 11, n. 4-5-6, pp. S410-S416.
Because You Are Important (1998) Missouri Lottery, Internal Document.
Ben-Arieh, David, and Eric D. Carley (1994) “Qualitative Intelligent Modeling of
Manufacturing Systems,” in Joshi, Sanjay B., and Jeffrey S. Smith (Eds.). Computer
Control of Flexible Manufacturing Systems. Research and Development, Chapman &
Hall, New York.
352
Beugre, Constant D. (1998) “Implementing Business Process Reengineering: The Role of
Organizational Justice,” Journal of Applied Behavioral Science, v. 24, n. 3, pp. 347-
360.
Bhatt, Ganesh (2000) “Exploring the Relationship Between Information Technology,
Infrastructure, and Business Process Reengineering,” Business Process Management
Journal, v. 6. n. 2, pp. 130-163.
Biazzo, Stefano (1998) “A Critical Examination of the Business Process Re-engineering
Phenomenon,” International Journal of Operations and Production Management, v.
18, n. 9/10, pp. 1000-1016.
Bielza, Concha, Sixto Ríos-Insua, and Manuel Gómez (1999) “ “Influence Diagrams for
Neonatal Jaundice Management,” in Horn, Werner, Yuval Shahar, Geger Lindberg,
Steen Andreasssen, and Jeremy Wyatt, (Eds.), Artificial Intelligence in Medicine –
Proceedings of the Joint European Conference in Artificial Intelligence in Medicine
and Medical Decision Making, AIMDM ’99-Aalborg, Denmark, Springer, New York.
Bisson, Barbara, Valerie Folk, and Martin Smith (2000) “Case Study: How to Do a
Business Process Improvement,” The Journal for Quality and Participation, v. 23, n.
1, January/February, pp. 58-63.
Bloodgood, James M., and J. L. Morrow (2000) “Strategic Organizational Change
Within an Institutional Framework,” Journal of Managerial Issues, v. 12 n. 2,
Summer, pp. 208-226.
Bourque, Linda B., and Eve P. Fielder (11995) How to Conduct Self-Administered and
Mail Surveys, Sage Publications, U. S. A.
Brannen, Julia (1992) Mixing Methods: Qualitative and Quantitative Research,
Averbury, U. S. A.
Brant, Martha, and Michael Isikoff (2002) “Going After Greed,” Newsweek, July 12, pp.
20-24.
Brudney, Jeffrey, Ted Hebert, and Deil Wright (1999) “Reinventing Government in
American States: Measuring and Explaining Administrative Reform, “ Public
Administration Review, v. 59 n. 1, pp. 19-37.
Burke, W. Warner (1992) Organization Development. A Process of Learning and
Changing. Addison Wesley, New York.
Burke, W. Warner (1994) “Diagnostic Models for Organization Development,” in Ann
Howard and Associates (Ed.), Diagnosis for Organizational Change: Methods and
Models, The Guilford Press, New York.
353
Burke, W. Warner (1997) “The New Agenda for Organizational Development,”
Organizational Dynamic, v. 26, n. 1, Summer, pp. 7-20.
Burke, Warner W., Celeste A. Coruzzi, and Allan H. Church (1996) “The Organizational
Survey as an Intervention for Change,” in Allen I. Kraut (Ed.), Organizational
Surveys: Tools for Assessment and Change, Jossey-Bass Publishers, San Francisco.
Burke, W. Warner, and George H. Litwin (1992) “A Causal Model of Organizational
Performance and Change, “ Journal of Management, v. 18, n. 3, pp. 523-545.
Burke, W. Warner, and William Trahant (2000) Business Climate Shifts: Profiles of
Change Makers, Butterworth-Heinemann, U. S. A.
Camp, Robert C. (1989) Benchmarking: The Search for Industry Best Practices That
Lead To Superior Performance, ASQC Quality Press, U. S. A.
Campbell, Bruce (1998) “Process Failure in a Rapidly Changing High-Tech
Organization: A System Dynamics Approach,” in Ling, Tok Wang, Sudha Ram and
Mong Li Lee (Eds.), Conceptual Modeling - ER’98. Proceedings of the 17th
International Conference on Conceptual Modeling-Singapore, Springer, New York.
Cantamessa, Marco, and Emilio Paolucci (1998) “Using Organizational Analysis and
IDEF0 for Enterprise Modeling in SMEs,” International Journal of Computer
Integrated Manufacturing, v. 11., n. 5. pp. 416-429.
Castle, Dian K., and Michael Sir (2001) “Organization Development: A Framework for
Successful Information Technology Assimilation,” Organization Development
Journal, v. 19, n. 1, Spring, pp. 59-71.
Caudle, Sharon L. (1994) “Reengineering Strategies and Issues,” Public Productivity and
Management Review, v. 18, n. 2, Winter, pp. 149-162.
Cheyunski, Fred, and Jamie Millard (1998) “Accelerated Business Transformation and
the Role of Organizational Architect,” The Journal of Applied Behavioral Science, v.
34, n. 3, September, pp. 268-285.
Chmiel, Nick (2000) Introduction to Work and Organizational Psychology, Blackwell
Publishers, Massachusetts.
Clarke, Steve, Tony Ellman, and Brian Lehaney (2000) “Reengineering an Information
System: A Case Study in Risk Reduction,” International Journal of Flexible
Manufacturing Systems, v. 12, n. 4, October, 305-320.
Clausen, Jens, Jasper Hansen, Jasper Larsen, and Allen Larsen (2001) “Disruption
Management,” ORMS Today, v. 28, n.5, October, pp. 40-43.
354
Clemons, Eric K. (1995) “Using Scenario Analysis to Manage the Strategic Risk of
Reengineering,” Sloan Management Review, Summer, pp. 61-71.
Cook John D., Susan J. Hepworth, Toby D. Wall, and Peter B. Warr (1981) The
Experience of Work – A Compendium and Review of 249 Measures and their Use,
Academic Press, New York.
Cook, Thomas D., and Donald T. Campbell (1979) Quasi-Experimentation. Design &
Analysis for Field Settings, Houghton Mifflin Company, Boston.
Cooke, Robert A., and Denise M. Rousseau (1988) “Behavioral Norms and Expectations
– A Quantitative Approach to the Assessment of Organizational Culture,” Group and
Organizational Studies, v. 13, n. 3, September, pp. 245-273.
Cooper, Randolph D. (2000) “Information Technology Development Creativity: A Case
Study to Attempt Radical Change, “ MIS Quarterly, v. 24, n. 2, June, pp. 245-376.
Cooper, Robin, and Lynne Markus (1995) “Human Reengineering,” Sloan Management
Review, Summer, pp. 39-58.
Coyle, R. G. (1996) System Dynamics Modeling: A Practical Approach, Chapman and
Hall, New York.
Crandall, Richard E. (2002) “Keys to Better Performance Measurement,” Industrial
Management, v. 44, n. 1, January – February, pp. 19 – 24.
Creswell, John W. (1998) Qualitative Inquiry and Research Design: Choosing Among
Five Traditions, Sage Publications, U. S. A.
Crowe, Thomas J., and Joseph D. Rolfes (1998) “Selecting BPR Projects Based on
Strategic Objectives,” Business Process Management Journal, v. 4 n. 2, pp.114-136.
Crowe, Thomas J., Sangwook Kim, Pek Ying Fong, Ravindra Kalantri, and Humberto R. Alvarez (2000) Business
Process Engineering At a ‘Profit-Driven’ Non-Profit Organization: A Final Report to the Missouri Lottery, The
University of Missouri and Missouri Lottery, Internal Document.
Crowe, Thomas J., José L. Zayas-Castro, and Sompop Vanichsenee (2002) “Readiness
Assessment for Enterprise Resource Planning,” Proceedings of the 11th International
Conference on Management of Technology, Miami, April 17-21, 8 pages, CD-ROM
published.
Cryer, Jonathan D., and Robert B. Miller (1991) Statistics for Business: Data Analysis
and Modeling, PWS-Kent Publishing Co., Boston.
355
D’Aunno, Thomas, Melissa Succi, and Jeffrey A. Alexander (2000) “The Role of
Institutional and Market Forces in Divergent Organizational Change,” Administrative
Science Quarterly, v. 45, n. 4, December, 679-703.
Damanpour, Fariborz (1991) “ Organizational Innovation: A Meta-Analysis of Effects of
Determinants and Moderators,” Academy of Management Journal, v. 34, n. 3, pp.
555-580.
Damanpour, Fariborz, and Shanti Gopalakrishnan (1999) “Organizational Adaptation and
Innovation: The Dynamics of Adopting Innovation Types,” in Brockhoff, Klaus,
Alok K. Chakrabarti and Jürgen Hauschildt, (Eds.), The Dynamics of Innovation:
Strategic and Managerial Implication, Springer –Verlag, N. Y.
Dangerfield, B. C. (1999) “System Dynamics Applications to European Health Care
Issues,” Journal of the Operational Research Society, v. 50, n. 4, pp. 345-353.
Daniel, Wayne W. (1990) Applied Nonparametric Statistics, PWS-KENT Publishing Co.,
Boston.
Davenport, Thomas H., and James E. Short (1990) “The New Industrial Engineering:
Information Technology and Business Process Redesign,” Sloan Management
Review, v. 11, n. 4, Summer, pp. 11-27.
Davidson W. H. (1999) “Beyond Re-engineering: The Three Phase of Business
Transformation,” IBM Systems Journal, v. 38, n. 2/3, pp. 485-499.
DeCanio, Stephen J., Catherine Dibble, and Keyvan Amir-Atefi (2000) “The Importance
of Organizational Structure for the Adoption of Innovation,” Management Science, v.
46, n. 10, October, pp. 1285-1299.
De Haas Marco, and Ad Kleingeld (1999) “Multilevel Design of Performance
Measurement Systems: Enhancing Strategic Dialogue Throughout the Organization,”
Management Accounting Research, v. 10, n. 3, pp.233-261.
Deluga, Ronald (1988) “Relationship of Transformational and Transactional Leadership
With Employee Influencing Strategies,” Group and Organizational Studies, v. 13, n.
4, December, pp. 458-467.
Dent, Eric B., and Susan Galloway Goldberg (1999) “Challenging Resistance to
Change,” The Journal of Applied Behavioral Science, v. 35, n. 1, March, pp. 25-41.
DeTombe, Dorien J. (2001) “Compram, A Method for Handling Complex Societal
Problems,” European Journal of Operational Research, v. 128, n. 2, pp. 261-266.
356
Doumeingts, Guy, Yves Ducq, Bruno Vallespir, and Stephane Kleinhans (2000)
“Production Management and Enterprise Modeling,’ Computers in Industry, v. 42, n,
2-3, pp. 245-263.
Drew, Stephen (1994) “BPR in Financial Services, Factors for Success,” Long Range
Planning, v. 27, n. 5, October, pp. 25-41.
Dulton, Jane E., Susan J. Ashford, Regina M. O’Neill, and Katherine A. Lawrence (2001)
“Moves That Matter: Issue Selling and Organizational Change,” Academy of
Management Journal, v. 44, n. 4, pp. 710-736.
Duffy, Jo Ann M., and Alice A. Ketchand (1998) “Examining the Role of Service Quality
in Overall Service Satisfaction,” Journal of Managerial Issues, v. 10, n. 2, Summer,
pp. 240-255.
Dutta, Amitava, and Rahul Roy (2002) “System Dynamics,” ORMS Today, v. 29, n. 3,
June, pp. 30-35.
Edwards, Tim (2000) “Innovation and Organizational Change: Developments towards an
interactive process perspective,” Technology Analysis and Strategic Management, v.
12, n. 4, December, pp. 445 – 464.
Eisenberg, Howard (1998) “Reengineering and Dumbsizing: Mismanagement of the
Knowledge Resource,” IEEE Engineering Management Review, Fall, pp. 78-86.
Elion, Samuel (1993) “Managing Change,” Omega. The International Journal of
Management Science, v. 21, n. 1, January, pp.3-5.
Ettlie, John E. (2000) Managing Technological Innovation, John Whiley & Sons, Inc.,
New York.
Ettlie, John E., William P. Bridges, and Robert D. O’Keefe (1984) “Organization
Strategy and Structural Differences for Radical Versus Incremental Innovation,”
Management Science, v. 30, n. 6, June, pp. 682 – 693.
Ettlie, John E., and Ernesto M. Reza (1992) “Organizational Integration and Process
Innovation,” Academy of Management Journal, v. 35, n. 4, pp. 795-827.
Fagan, Mary Helen (1995) Business Process Redesign: Individual and Organizational
Factors, University of Texas at Arlington, Doctoral Dissertation.
Falletta, Salvatore (1999) Assessing the Statistical Conclusions and Predictive Validity of
a Diagnostic Model and Survey of Organizational Performance and Change, North
Carolina State University, Doctoral Dissertation.
357
Farias, Gerard, and Homer Johnson (2000) “Organizational Development and Change
Management. Setting the Record Straight,” The Journal of Applied Behavioral
Science, v. 36, n. 5, September, pp. 376-379.
Farias, Gerard, and Arup Varma (2000) “Integrating Job Characteristics, Sociotechnical
Systems and Reengineering, Presenting a Unified Approach to Work and
Organization Design,” Organization Development Journal, v. 18, n. 3, Fall, pp. 11-
23.
Finkelstein, Sydney (1992) “Power in Top Management Teams: Dimensions,
Measurement and Validation,” Academy of Management Journal, v. 35, n. 3, pp. 505-
538.
Forrester, Jay W. (1961) Industrial Dynamics, The M. I. T. Press – Massachusetts
Institute of Technology and John Wiley & Sons, Inc., U. S. A.
Fox, Mark S, and Michael Gruninger (1998) “Enterprise Modeling,” AI Magazine, v. 19,
n. 3, Fall, pp. 109-121.
Fox, Mark S., Mihai Barbucenau, and Michael Gruninger (1996) “An Organization
Ontology for Enterprise Modeling: Preliminary Concepts for Linking Structure and
Behavior,” Computers in Industry, v. 29, n. 1-2, July, pp. 123-134.
Frank, Kenneth A., and Kyle Fahrbach (1999) “Organization Culture as Complex
System: Balance and Information in Models of Influence and Selection,”
Organization Science, v. 10, n. 3, May-June, pp. 253-277.
French, Wendell L., and Cecil H. Bell Jr. (1999) Organization Development. Behavioral
Science Interventions for Organization Improvement, Prentice-Hall, New Jersey.
French, Bill, and Carl E. DeVilbiss (2000) “Measuring Systematic Unity in a Learning
Organization,” Journal of Management in Engineering, v. 16 n. 4, July/August, pp.
39 - 46.
Gabouri, Jane (2001) “Working Through the Pain,” IIE Solutions, v. 33, n. 11,
November, pp. 33-35
George, Stephen, and Arnold Weimerskirch (1994) Total Quality Management:
Strategies and Techniques Proven at Today’s Most Successful Companies, John
Wiley and Sons, New York.
Gharajedaghi, Jamshid (1999) Systems Thinking: Managing Chaos and Complexity. A
Platform for Designing Business Architecture, Butterworth – Heinemann, Boston.
358
Giaglis, George M. (2001) “A Taxonomy of Business Process Modeling and Information
Systems Modeling Techniques,” The International Journal of Flexible Manufacturing
Systems, v. 13, n. 2, pp. 209-228.
Gopalakrishnan, Shanti, and Fariborz Damanpur (2000) “The Impact of Organizational
Context on Innovation Adoption in Commercial Banks,” IEE Transactions on
Engineering Management, v. 47, n. 1, February, p. 14-25.
Gordon, Shelley S., Wayne H. Stewart Jr., Robert Sweo, and William A. Luker (2001)
“Convergence Versus Strategic Reorientation: The Antecedents of Fast-paced
Organizational Change,” Journal of Management, v. 26, n. 5, pp. 911- 945.
Gorsuch, Richard L. (1983), Factor Analysis, Lawrence Erlbaum, New Jersey.
Greve, Henrich R., and Alva Taylor (2000) “Innovations as Catalysts for Organizational
Change: Shifts in Organizational Cognition and Search,” Administrative Science
Quarterly, v. 45, n. 1, March, pp. 54-80.
Grossman Jr., Thomas A. (2002) “Student Consulting Projects Benefit Faculty and
Industry,” Interfaces, v.32, n. 2, March-April, pp.42-48.
Grover, Varun (1999) “From Business Process Reengineering to Business Process
Change Management: A Longitudinal Study of Trends and Practices,” IEEE
Transactions on Engineering Management, v. 46, n. 1, February, pp. 36-46.
Grover, Varun, Seung Ryul Jeong, William J. Kettinger, and James T. C. Teng (1995)
“The Implementation of Business Process Reengineering, “ Journal of Management
Information Systems, v.12, n. 1, Summer, pp. 109 – 144.
Guimaraes, Tom (1997) “Empirically testing the antecedents of BPR success,”
International Journal of Production Economics, v. 50, n. 2-3, pp.199-210.
Gummesson, Evert (1991) Qualitative Methods in Management Research, Sage
Publications, U. S. A.
Gunasekaran, A., and J. Adebayo (2000) “GEC Alsthom learns many lessons from BPR,”
Production and Inventory Management Journal, v. 41, n. 3, Second Quarter, pp. 9-13.
Gupta, Bhuwenesh, Thomas J. Crowe, and James S. Noble (1999) “Business Process
Reengineering,” in Webster, John E. (Ed.), Encyclopedia of Electrical and Electronic
Engineering, v. 2, pp. 645-657.
Hage, J. T.(1999) “Organizational Innovation and Organizational Change,” Annual
Review of Sociology, v. 25, pp. 597-622.
359
Hall, Gene, Jim Rosenthal, and Judy Wade (1993) “How to Make Reengineering Really
Work,” Harvard Business Review, v. 71, n. 6, November – December, pp. 119 – 131.
Hammer, Michael (1990) “Reengineering Work: Don’t Automate, Obliterate,” Harvard
Business Review, c. 68, n. 4, pp. 104 – 112.
Hammer, Michael, and James Champy (1993) Reengineering the Corporation – A
manifesto for Business Revolution, Harper Collins Publishers, U. S. A.
Harrison, Michael I. (1994) Diagnosing Organizations: Methods, Models and Processes,
Sage Publications, London.
Harrison, Michael I., and Arie Shirom (1999) Organizational Diagnosis and Assessment,
Sage Publications, California.
Hartman, Sandra J., Augusta C. Yrle, Michael C. White, and William H. Friedman
(1998) “Theory Building: Issues and an Agenda,” International Journal of Public
Administration, v. 12. n. 15, pp. 723 – 754.
Heller, Trudy (2000) “”If Only We’d Known Sooner:” Developing Knowledge of
Organizational Changes Earlier in the Product Development Process,” IEEE
Transactions on Engineering Management, v. 47, n. 3, August, pp. 335 – 344.
Herda, Ellen A (1999) Research Conversations and Narrative, Praeger, Conn.
Hillier, Frederick S., and Gerald J. Lieberman (1990) Introduction to Operations
Research, McGraw-Hill, New York.
Holland, Christopher P., and Ben Light (1999) “A Critical Success Factors Model for
ERP Implementation,” IEEE Software, May – June, pp. 30-35.
Horner, Peter (2202) “Looking Out for No. 1,” ORMS Today, v. 29, n.1, February, pp.28-
33.
Hosking, D. M., and N. R. Anderson (1992) Organizational Change and Innovation:
Psychological Perspectives and Practices in Europe, Routledge, London.
Howard, George S. (1985) Basic Research Methods in the Social Sciences, Scott,
Foresman and Company, U. S. A.
Hurley, Robert F (1998) “Managing Change: At Ethnographic Approach to Developing
Research Propositions and Understanding Change in Sales Organizations,” Selling
and Sales Management in Action, v. 18 n. 3, Summer, pp. 57-71.
360
Irani, Zahir, and Erwin Rausch (2000) “Empirical Testing of a Leadership and Planning
Model for Reengineering Business Processes,” International Journal of Flexible
Manufacturing Systems, v. 12, n. 4, October, 341-357.
Isabella, Lynn A. (1990) “Evolving Interpretations as Change Unfolds: How Mangers
Construe Key Organizational Events,” Academy of Management Journal, v. 33, n. 1,
p. 7 - 41.
Jackson, Mike C. (2001) “Critical Systems Thinking and Practice,” European Journal of
Operational Research, v. 128, n. 2, pp. 233-244.
Jaffe, Dennis T., and Cynthia D. Scott (1998) “Reengineering in Practice: Where are the
People? Where is the learning?,” Journal of Applied Behavioral Science, v. 34, n. 3,
pp. 250-267.
Jang, Wooseung, Thomas J. Crowe, and Cerry M. Klein (1999). “Applying Business
Process Reengineering to Realize Supply and Demand Chain Management,”
Proceedings of the 4th annual International Conference on Industrial Engineering
Theory, Applications, and Practice, November, San Antonio, Texas.
Jarrar, Yasar F., and Elaine M. Aspinwall (1999) “Integrating Total Quality Management
and Business Process Re-engineering: Is it enough?,” Total Quality Management, v.
10, n. 4/5, pp. 584-593
Jensen, Kurt ((1996) Colored Petri Nets: Basic Concepts, Analysis Methods and
Practical Use, Springer-Verlag, New York
Jiang, James J., Marion G. Sobol, and Gary Klein (2000) “Performance Ratings and
Importance of Performance Measures for IS Staff: The Different Perceptions of IS
Users and IS Staff, “ IEEE Transactions on Engineering Management, v. 47, n. 4,
November, pp. 424-434.
Johannessen, Jon-Arild, Bjørn Olsen, and G. T. Lumpkin (2001) “Innovation as
Newness: What is New, How New, and New to Whom?,” European Journal of
Innovation Management, v. 4. n. 1, pp. 20-31.
Kamath, Manjunath (1994) “Recent Developments in Modeling and Performance
Analysis Tools for Manufacturing Systems,” in Joshi, Sanjay B., and Jeffrey S. Smith
(Eds.), Computer Control of Flexible Manufacturing Systems. Research and
Development, Chapman & Hall, New York.
Kaplan, Robert S., and David P. Norton (1992) “The Balanced Scorecard – Measures
That Drive Performance,” Harvard Business Review, v. 70, n. 1, February, pp. 71-79.
361
Keen, Peter G. W. (1997) The Process Edge, Harvard Business School Press, Boston,
MA.
Kelly, Dawn, and Terry L. Amburgey (1991) “Organizational Inertia and Momentum: A
Dynamic Model of Strategic Change,” Academy of Management Journal, v. 34, n. 3,
pp. 591-612.
Kessler, Thomas G (1998) “IT will take more than strategic plans to create 21st century
government organizations,” The Public Manager: The New Bureaucrat, v. 27 n. 3,
Fall, pp. 21-22.
Kennedy, Carol (1994) “Re-engineering: The Human Costs and Benefits,” Long Range
Planning, v. 27, n. 5, October, pp. 64-72.
Kettinger, William J., James T. C. Teng, and Subashish Guha (1997) “Business Process
Change: A Study of Methodologies, Techniques and Tools,” MIS Quarterly, v. 21, n.
1, March, pp. 55 – 79.
Kettl, Donald F. (2000) “Relentless Reinvention,” Government Executive, v. 32, n. 1,
January, pp. 25-29.
Kiel, L. Douglas (1994) Managing Chaos and Complexity in Government. A New
Paradigm for Managing Change, Innovation, and Organizational Renewal, Jossey-
Bass Publishers, San Francisco.
Kim, Hee-Woong (2000) “Business Process Versus Coordination Process in
Organizational Change,” International Journal of Flexible Manufacturing Systems, v.
12, n. 4. October, pp. 275-290.
Kirikova, Marite (2000) “Explanatory Capability of Enterprise Models,” Data &
Knowledge Engineering, v. 33, n. 2, pp. 119-136.
Klabbers, Jan H. G. (2000) “Learning as Acquisition and Learning as Interaction,”
Simulation & Gaming, v. 31, n. 3, September, pp. 380-406.
Klein, Mark M. (1993) “IEs Fill Facilitator Role in Benchmarking Operations to Improve
Performance,” Industrial Engineering, v. 25, n. 9, September, pp. 40-42.
Kotter, John P. (1995) “Leading Change: Why Transformation Efforts Fail”, Harvard
Business Review, March-April, pp. 59-67.
Kueng, Peter (2000) “Process Performance Measure System: A Tool to Support Process-
Based Organizations,” Total Quality Management, v. 11, n. 1, January, pp. 67-85.
362
Larsen, E. R., and A. Lomi (1999) “Resetting the Clock: A Feedback Approach to the
Dynamics of Organizational Inertia, Survival and Change,” Journal of the
Operational Research Society, v. 50, n. 4, pp. 206 – 221.
Larsson, Pär, Jan Löwstedt, and A. B. (Rami) Shani (2001) “IT and the Learning
Organization: Exploring Myths of Change,” Organizational Development Journal, v.
19, n. 1, Spring, pp. 73-90.
Lapsley, Irvine, and June Pallot (2000) “Accounting, Management and Organizational
Change: A Comparative Study of Local Government,” Management Accounting
Research, v. 11, n. 2, pp. 213-229.
Lee, Jaejung (1995) An Exploratory Study of Organizational/Managerial Factors
Influencing Business Process Reengineering Implementation: An Empirical Study of
Critical Success Factors and Resistance Management, University of Nebraska –
Lincoln, Doctoral Dissertation.
Leeuw, Franz L., Ray C. Rist, and Richard C. Sonnichsen (1994) Can Governments
Learn?, Transaction Publishers, U. S. A.
Lewin, Kurt (1951) Field Theory in Social Science: Selected Theoretical Papers, Dorwin
Cartwright, (Ed.), Greenwood Press, U. S. A.
Libbey, Meryl G. (1994) “Reengineering Public Innovation,” Public Productivity and
Management Review, v. 18, n. 2, Winter, pp. 163-175.
Lin, Fu-Ren, Gek Woo Tan, and Michael J. Shaw (1999) “Multiagent Enterprise
Modeling,” Journal of Organizational Computing and Electronic Commerce, v. 9, n.
1, pp. 7-32.
Loehlin, John C. (1998) Latent Variable Models. An Introduction to Factor, Path, and
Structural Analysis, Lawrence Erlbaum Associates, Publishers, New Jersey.
Love, P. E. D., and A. Gunasekaran (1997) “Process Reengineering: A Review of
Enablers,” International Journal of Production Economics, v. 30, n. 2/3, pp. 183-197.
López, Miguel (1994) “Decsion Influence Diagrams with Fuzzy Utilities,” in Bouchon-
Meunier, Bernadette, Ronald R. Yager and Lotfi A. Zadeh (Eds.), Advances in
Intelligent Computing – IPMU ’94, Selected papers 5th International Conference on
Information Processing and Management of Uncertainty in Knowledge-Based
Systems-Paris, Springer, New York.
Lu, Hsi-Peng, and Da-Chin Yeh (1998) “Enterprises’ Perceptions on Business Process
Re-Engineering: A Path Analytic Model,” Omega, International Journal of
Management Science, v. 26, n. 1, pp. 17-27.
363
Lu, Stephen C. Y., and Jian Cai (2001) “Collaborative Design Process Model in the
Sociotechnical Engineering Design Framework,” Artificial Intelligence for
Engineering Design, Analysis and Manufacturing, v. 15, n. 1, pp. 3-20.
Luthans, Fred, Dianne H. B. Welsh, and Lewis A. Taylor III (1988) “A Descriptive
Model of Managerial Effectiveness,” Group and Organization Studies, v. 13, n. 2,
June, pp. 148-162.
Marshak, Robert J. (1993) “Lewin Meets Confucius: A Re-View of the OD Model of
Change,” Journal of Behavioral Science, v. 29, n. 4, December, pp. 393-415.
Martinez, Erwin V. (1995) “Successful Reengineering Demands IS/Business
Partnerships,” Sloan Management Review, Summer, pp. 51-61.
Maull, R. S., A. M. Weaver, S. J. Childe, P. A. Smart, and J. Bennett (1996) “Current
Issues in Business Process Reengineering,” International Journal of Operations and
Production Management, v. 15, n. 11, pp. 37-52.
Mayer, Roger C., and F. David Schoorman (1992), “Predicting Participation and
Production Outcomes Through a Two-Dimensional Model of Organizational
Commitment,” Academy of Management Journal, v. 35, n. 3, pp.- 671-684.
Mayo, Michael C., and Gordon S. Brown (1999) “Building a Competitive Business
Model,” Ivey Business Journal, v. 63, n. 3, Mar./Apr., pp. 18-23.
McAdam, Rodney (2000) “The Implementation of Reengineering in SME’s: A Grounded
Study,” International Small Business Journal, v. 18, n. 4, July – September, pp. 29-
45.
McAdam. Rodney, and Neil Mitchell (1998) “Development of a Business Process
Reengineering Model Applicable to the Public Sector,” Total Quality Management, v.
9, no. 4/5, July, pp. S160-S163.
McAfee, R. Bruce, and Paul J. Champagne (1987) Organizational Behavior: A
Manager’s View, West Publishing Co., U. S. A.
McCormack, Kevin, and Bill Johnson (2001) “Business Process Orientation, Supply
Chain Management, and the e-Corporation,” IIE Solutions, v. 33, n. 10, October, 33-
37.
McGarry, Nina, and Tom Beckman (1999) Business Reengineering at a Large
Government Agency, Idea Group Publishing, Pennsylvania.
McLeod Jr., Raymond (1998) Management Information Systems, Prentice Hall, U. S. A.
364
McNanus, Kevin (2002) “Investment in Futility,” IIE Solutions, v.34, n. 1, January, pp.
21-22.
Mechling, Jerry (1994) “Reengineering Government: Is There a “There” There?,” Public
Productivity and Management Review, v. 18, n. 2, Winter, pp. 189-197.
Mitleton-Kelly, Eve (2000) “Complexity: Partial Support for BPR?,” in Henderson, Peter
(Ed.), Systems Engineering for Business Process Change, Springer, New York.
Miyazaki, Anthony D., Ann Hansen, and David E. Sprott (1997) “A Longitudinal
Analysis of Income-based Tax Regressivity of State-sponsored Lotteries,” Journal of
Public Policy & Marketing, v. 17 n. 2, Fall, pp. 161-178.
Moosbruker, Jane B., and Ralph D. Loftin (1998) “Business Process Redesign and
Organization Development. Enhancing Success by Removing Barriers,” Journal of
Applied Behavioral Sciences, v. 34 n.3, September, pp. 286-304.
Morel, Benoit, and Rangaraj Ramanujam (1999) “Through the Looking Glass of
Complexity: The Dynamics of Organizations as Adaptive and Evolving Systems,”
Organization Science, v. 10, n. 3, May-June, pp. 278-293.
Morecroft, John D. W. (1988) ”System Dynamics and Microworlds for Policymakers,”
European Journal of Operational Research, v. 35, p. 301-320.
Morse, Janice M., and Peggy Anne Field (1995) Qualitative Research Methods for
Health Professionals, Sage Publications, U. S. A.
Murgatroyd, I. S., A. Hodgson, and R. H. Weston (1998) “Enterprise Modeling in
Support of Business Process Visualization and Improvement, “ Proceedings of the
Institution of Mechanical Engineers, v. 212, Part B, pp. 621-633.
Murray, Mary Ann, H. Richard Priesmeyer, Lawrence F. Sharp, Rhonda Jensen, and
Gwenneth Jensen (2000) “Nonlinearity as a Tool for Business Process
Reengineering,” Business Process Management, v. 6. n. 4, pp. 304 – 313.
Myles, Raymond E., Charles C. Snow, Alan D. Meyer, and Henry Coleman, Jr. (1991)
“Organizational Strategy, Structure and Process,” in Organ, Dennis W. (Ed.), The
Applied Psychology of Work Behavior, Irwin, Illinois.
Nader, Frederick P., and Alan G. Merten (1998) “The Need to Integrate and Apply
Knowledge From Three Disciplines – Business Process Reengineering, Information
Technology and Organizational Development,” The Journal of Applied Behavioral
Science, v. 34, n. 3, September, pp. 246-249.
365
Nadler, David A., and Michael L. Tushman (1999) “The Organization of the Future:
Strategic Imperatives and Core Competencies for the 21st Century,” IEEE
Engineering Management Review, v. 27 n. 4, Winter, pp. 96-107.
Nadler, David A. and Michael L. Tushman (1983) “A General Diagnostic Model for
Organizational Behavior: Applying a Congruence Perspective,” in Hackman J.
Richard, Edward E. Lawler III and Lyman E. Porter (Eds.), Perspectives on Behavior
in Organizations, MacGraw-Hill, New York.
Narasimhan, Ram, and Jayanth Jayaram (1998) “Reengineering service operation: a
longitudinal case study,” Journal of Operations Management, v. 17, December, pp. 7-
22.
Neter, John, Michael H. Kutner, Christopher J. Nachtsheim, and William Wasserman
(1996) Applied Linear Statistical Models, McGraw-Hill, U. S. A.
Nielsen, Morgens, and Dan Simpson, (Eds.), (2000) Application and Theory of Petri Nets
2000, 21st. International Conference, ICATPN 2000, Springer, New York.
Nolan, Richard (2002) “Average Rarely Exists,” IIE Solutions, v. 34, n. 2, February,
p.24.
Nord, Walter R., and Sharon Tucker (1987) Implementing Routine and Radical
Innovations, Lexington Books, Massachusetts.
Nørreklit, Hanne (2000) “The Balance of the Balanced Scorecard. A Critical Analysis of
Some of its Assumptions,” Management Accounting Research, v. 11, n. 2, pp. 65 –
88.
Nunnally, Jum C., and Ira H. Bernstein (1994) Psychometric Theory, McGraw-Hill, New
York.
O’Hara, Margaret T., Richard T. Watson, and C. Bruce Kavan (1999) “Managing the
Three Levels of Change,” Information Systems Management, v. 16, n. 3, Summer, pp.
63-70.
O’Connor, Ellen, S. (2000) ”Plotting the Organization. The Embedded narrative as a
Construct for Studying Change,” The Journal of Applied Behavioral Science, v. 36, n.
2, June, pp. 174-192.
Obeng, Eddie, and Stuart Crainer (1994) Making Reengineering Happen, Pitman
Publishing, England.
Odrey, Nicholas G., Jonathan D. Green, and Adrienne Appello (2001) “A Generalized
Petri Net Modeling Approach for the Control of Re-entrant Flow Semiconductor
Wager Fabrication,” Robotics and Integrating Manufacturing, vol. 17, n. ½, pp. 5-11.
366
Ofori-Dankwa, Joseph, and Scott D. Julian (2001) “Complexifying Organizational
Theory: Illustration Using Time Research, “ Academy of Management Journal, v. 26,
n. 3, 415-430.
Ogata, Katsuhiko (1992) Systems Dynamics, Prentice-Hall, Inc., U. S. A.
Parasuraman, A., Valerie A. Zeithaml, and Leornard L. Berry (1988) “SERVQUAL: A
Multiple-Item Scale for Measuring Consumer Perceptions of Service Quality,”
Journal of Retailing, v. 64, n. 1, Spring, pp. 12-40.
Pine, B. Joseph (1993) Mass Customization: The New Frontier in Business Competition,
Harvard Business School Press, U. S. A.
Pascale, Richard T., Mark Millemann, and Linda Gioja (2000) Surfing the Edge of
Chaos. The Laws of Nature and The New Laws of Business, Crown Business, New
York.
Pearl, Judea (2000) Causality. Models, Reasoning and Inferences, Cambridge University
Press, Cambridge, UK.
Pegden, Dennis C., Robert E. Shannon, and Randall P. Sadowski (1995) Introduction to
Simulation Using SIMAN, McGraw-Hill, New York.
Pettigrew, Andrew M., Richard W. Woodman, and Kim S. Cameron (2001) “Studying
Organizational Change and Development: Challenges For Future Research,”
Academy of Management Journal, v. 44, n. 4, pp. 697-713.
Pike, John, and Richard Barnes (1994) TQM in Action: A Practical Approach to
Continuous Performance Improvement, Chapman and Hall, New York.
Poister, Theodore H., and Gregory D. Streib (1999) “Strategic Management in the Public
Sector. Concepts, Models, and Processes,” Public Productivity & Management
Review, v. 22 n. 3, March, pp. 308-325.
Poole, Peter P. (1998) “Words and Deeds of Organizational Change” Journal of
Managerial Issues, v. 10 n. 1, Spring, pp.45-59.
Porter, Michael E. (1998) Competitive Advantage: Creating and Sustaining Superior
Performance, The Free Press, U. S. A.
Powell, Sarah (2002) “Spotlight on Renée Mauborgne,” Emerald Now Spotlight, April
2002 (on http://www.emeraldinsight.com/now/archive /apr2002/spotlight.htm)
367
Presley Adrien, Joseph Sarkis, and Donald H. Liles (2000), “A Soft-System Methodology
Approach for Product and Process Innovation,” IEEE Transactions on Engineering
Management, Vol 47, No. 3, pp. 379-392.
Quattrone, Paolo, and Trevor Hopper (2001) “What Does Organizational Change Mean?
Speculations on a Taken for Granted Category,” Management Accounting Review, v.
12, n. 4 pp. 403-435.
Raczkowsky, J. and W. Reithofer (1998) “ Design of Consistent Enterprise Models,”
Cybernetics and Systems: An International Journal, v. 29, pp. 525-552.
Rasmussen, Dan Renè, and Erik Mosekilde (1988) “Bifurcations and Chaos in a
Generic Management Model,” European Journal of Operational Research, v. 35, pp. 80-
88.
Rathi, Krishnakant R., (1999) A Strategic and Diagnostic Business Process Evaluation
Methodology, University of Missouri – Columbia, Master’s Thesis.
Remenyi, Dan, Briam Williams, Arthur Money, and Ethné Swartz (1998), Doing
Research in Business and Management, Sage Publications, U. S. A.
Richardson, G. P. (1999) “Reflections for the Future of Systems Dynamics,” Journal
of the Operational Society, v. 50, n. 4, pp. 440 – 449.
Rogers, Robert W., and William C. Byham (1994) “Diagnosing Organization Cultures
for Realignment,” in Ann Howard and Associates (Eds.), Diagnosis for
Organizational Change, The Guilford Press, New York.
Rouse, Anne, and David Watson (1994) “Some Classic Theories of Organizational
Change, and Their Implications for Business Process Renovation and Re-engineering,
“ in B. C. Glasson, et al., (Ed.), Business Process Re-Engineering: Information
Systems Opportunities and Challenges, Elsevier Science B. V., U. K.
Russell, Gregory D., and Robert J. Waste (1998) “The Limits of Reinventing
Government,” American Review of Public Administration, v. 28 n. 4, December, pp.
325-346.
Samuelson, Robert J. (2002) “The Erosion of Confidence,” Newsweek, June 17, p. 45.
368
Sastry, M. Anjali (1997) ”Problems and Paradoxes in a Model of Punctuated
Organizational Change,” Administrative Science Quarterly, v. 42, pp. 237-275.
Scherer, Anderas Georg, and Marc Smid (2000) “ The Downward Spiral and the US
Model Business Principles – Why MNEs Should Take Responsibility for the
Improvement of World-Wide Social and Environmental Conditions,” Management
International Review, v. 40, n. 4 pp. 351-371.
Scherr, A. L. (1993) “A New Approach to Business Processes,” IBM Systems Journal, v.
32, n. 1, pp. 81 - 99.
Scofield, Michael (1996) Enterprise Models. Anticipating Complexity, Enterprise
Reengineering, www.reengineering.com.
Senge, Peter M., and John D. Sterman (1992) “Systems Thinking and Organizational
Learning: Acting Locally and Thinking Globally in the Organization of the Future,”
European Journal of Operational Research, v. 59, pp. 137-150.
Shachter, Ross D. (1986) “Evaluating Influence Diagrams,” Operations Research, v. 34,
n. 6, November – December, pp. 871-882.
Shareef, Reginald (1997) “A Popperian View of Change in Innovative Organizations,”
Human Relations, v. 50 n. 6, pp. 655-670.
Shaughenessy, John J., and Eugene B. Zechmeister (1994) Research Methods in
Psychology, McGraw Hill, U. S. A.
Skarke, Gary, Dutch Holland, Bill Rogers, and Diane Landon (1995) The Change
Management Toolkit, Holland and Davis, U. S. A.
Spector, Bert A. (1989) “From Bogged Down to Fired Up: Inspiring Organizational
Change,” Sloan Management Review, v. 10, n. 4, Summer, pp.29 – 34.
Staw, Barry M., and Lisa D. Epstein (2000) “What Bandwagons Bring. Effects of
Popular Management Techniques on Corporate Performance, Reputation and CEO
Pay,” Administrative Science Quarterly, v. 45, n. 3, September, pp. 523-556.
Sterman, John D. (2000) Business Dynamics. Systems Thinking and Modeling for a
Complex World, McGraw-Hill, New York.
Sterman, John D. (2001) “System Dynamics Modeling: Tools for Learning in a
Complex World,” California Management Review, v. 43, n. 5, Summer, pp. 8 – 25.
369
Stevens, James (1996) Applied Multivariate Statistics for the Social Sciences, Lawrence
Erlbaum Associates, Publishers, New Jersey.
Strauss, Anselm, and Juliet Corbin (1990) Basic Qualitative Research. Grounded Theory,
Procedures and Techniques, Sage Publications, California.
Sørensen, Jasper B., and Toby E. Stuart (2000) “Aging, Obsolescence, and
Organizational Innovation,” Administrative Science Quarterly, v. 45, n. 1, March, pp.
81-112.
Talwar, Rohit (1993) “Business Re-engineering – a Strategy-Driven Approach,” Long
Range Planning, v. 26, n. 6, pp. 22-40.
Taylor, Howard M., and Samuel Karlin (1994) An Introduction to Stochastic Modeling,
Academic Press, New York.
Thompson, Steven K., and George A. F. Seber (1996) Adaptive Sampling, John Wiley &
Sons, New York.
Thong, James Y. L., Chee-Sing Yap, and Kin-Lee Seah (2000) “Business Process
Reengineering in the Public Sector: The Case of the Housing Developing Board in
Singapore,” Journal of Management Information Systems, v. 17, n. 1, summer, pp.
245-270.
Toffler, Alvin (1970) Future Shock, Random House, New York.
Toffler, Alvin (1972) The Futurist, Random House, New York.
Turban, Efraim, Ephraim Mclean, and James Wetherbe (1999) Information Technology
for Management. Making Connection for Strategic Advantage, John Wiley & Sons,
Inc., New York.
Umble, Elizabeth J., and M. Michael Umble (2002) “ Avoiding ERP Implementation
Failure,” Industrial Management, v. 44, n. 1, January-February, pp. 25 – 33.
U. S. General Accounting Office (1995) Business Process Reengineering Assessment
Guide.
U. S. General Services Administration (1997) Government Business Process
Reengineering Readiness Assessment.
Vacha-Haase, Tammi (2001) “Statistical Significance Should Not Be Considered One of
Life’s Guarantees: Effect Sizes are Needed,” Educational and Psychological
Measurement, v. 61, n. 2, April, pp. 219-224.
370
Van Dijkum, Cor (2001) “A Methodology for Conducting Interdisciplinary Social
Research,” European Journal of Operational Research, v. 128, n. 2, pp. 290-299.
Van de Ven, Andrew H., and Diane L. Ferry (1980) Measuring and Assessing
Organization, John Whiley and Sons, New York.
Vansina Leopold S., and Tharsi Taillieu (1996) “Business Process Reengineering or
Socio-Technical System Design in New Clothes?,” Research in Organizational
Change and Development, v. 9, pp. 81-100.
Veasey, Phillip W. (1994) “Managing a Programme of Business Re-engineering Projects
in a Diversified Business, “ Long Range Planning, v. 27, n. 5, October, pp. 124-135.
Vennix, Jac A. M. (1996) Group Model Building. Facilitating Team Learning Using
System Dynamics, John Wiley Sons, New York.
Ventana Systems, Inc. (1999) Vensim® PLE User’s Guide – Version 4. Included with the
software.
Vernadat, F. B., (1996) Enterprise Modeling and Integration: Principles and
Applications, Chapman & Hall, New York.
Waggoner, Daniel B., Andy D. Neely, and Mike P Kennerley (1999) “The Forces that
Shape Organizational Performance Measurement Systems: An Interdisciplinary
Review,” International Journal of Production Economics, v. 60-61, pp. 53 – 60.
Walston, Stephen L., Richard J. Bogue and Michael Schwarts (1999) “The Effects of
Reengineering: Fad or Competitive Factor? Practitioner Application,” Journal of
Healthcare Management, v. 44, n. 6, November – December, pp. 46-476.
Wechsler, Barton, and Bruce Clary (2000) “Implementing Performance Government,”
Public Productivity & Management Review, v. 23, n. 3, March, pp. 264-266.
Whitman, Larry, and Brian Huff (2001) “On the Use of Enterprise Models,” The
International Journal of Flexible Manufacturing Systems, v. 13, n. 2, pp. 195-208.
Wiley, Jack W. (1996) “Linking Survey Results to Customer Satisfaction and Business
Performance”, in Krautt, Allen I. (Ed.), Organizational Surveys: Tools for Assessment
and Change, Jossey-Bass Publishers, San Francisco.
Winch, G. (1998) “Dynamic visioning for Dynamic Environments,” Journal of the
Operational Research Society, v. 49, n. 4, pp. 354-361.
Wittenberg, Jason (1992) “On the Very Idea of a System Dynamic Model of Kuhnian Science,”
System Dynamics Review, v. 8, n. 1, winter, pp. 21-33.
371
Worren, Nicolay A. M., Keith Ruddle, and Karl Moore (1999) “From Organizational
Development to Change Management: The Emergence of a New Profession,” The
Journal of Applied Behavioral Sciences, v. 35, n. 3, September, pp. 273-286.
Wortman, J. C., H. M. H. Hegge, and S. Rolefes (2000) “Embedding enterprise software
in extended enterprise models,” Computers in Industry, v. 42, n. 2-3, pp. 231-243.
Wu, Bin (1994) Manufacturing Systems Design and Analysis. Context and Techniques,
Chapman & Hall, New York.
Wu, B., J. M. Kay, V. Looks, and M. Bennett (2000) “The design of Business Process
within Manufacturing Systems Management,” International Journal of Production
Research, v. 38, n. 17, pp. 4097 - 4111.
Yin Robert K. (1994) Case Study Research: Design and Methods, Sage Publications, U.
S. A.
Yuki, Gary, and David D. Van Fleet (1992) “Theory and Research on Leadership in
Organizations, “ in Dunnette, Marvi D., and Leaetta M. Hough (Eds.), Handbook of
Industrial and Organizational Psychology, Consulting Psychologists Press, Inc.,
California.
Zayas-Castro, José L., Thomas J. Crowe, and Humberto Alvarez (2002) “Organizational
Change: A Case for More Systematic and Dynamic Modeling,” Proceedings of the
2002 Annual Industrial Engineering Research Conference, Institute of Industrial
Engineers, Orlando, Florida, May 18-22, 10 pages, CR-ROM published.
Zeithaml, Valerie A., Leonard L. Berry, and A. Parasuraman (1988) “Communication
and Control Processes in the Delivery of Service Quality,” Journal of Marketing, pp.
35-48.
Zhou, MengChu, and Kurapati Venkatesh (1999) Modeling, Simulation, and Control of
Flexible Manufacturing Systems: A Petri Net Approach, World Scientific, River
Edge, NJ.
372
APPENDIX 1
DIAGNOSTIC INSTRUMENT
373
Consent Letter
Dear «name»
Humberto Alvarez is a doctoral student from the Department of Industrial and Manufacturing Systems
Engineering at the University of Missouri – Columbia. As part of his doctoral dissertation entitled A
Diagnostic Investigation and a Corrective Model for Implementing Change in Response to
Innovation, he is performing a follow up study on the different change efforts attempted at the Missouri
Lottery.
Included in his study is the application of a series of surveys and interviews to some of the employees at
different levels in this organization in order to gather information pertaining to the readiness of the
Missouri Lottery to successfully implement large scale change within the organization. The information
obtained from this study will be used to corroborate or reject a series of change hypotheses and models
proposed as integral elements of this project.
You have been randomly selected to participate in this research. Your participation is voluntary and will
not take more than one hour of your time. If you consider that the information asked in the surveys or the
interviews conflicts with your personal considerations, you can withdraw from the study at any time. The
project will be conducted under strict research guidelines. All the information obtained from this research
will be kept confidential and only group data and conclusions will be reported. There are no potential risks
associated with this project for you as a participant, since anonymity and confidentiality are guaranteed.
Please, indicate your participation consent by signing this form and returning it in the envelope provided. If
you have questions regarding this project or the specific methodologies that are being used, please feel to
contact Mr. Alvarez at the address shown below. In addition, should you have questions about your rights
as a participant in human subject research, please feel free to contact the Campus Institutional Review
Board of the University of Missouri – Columbia at the following telephone number (573)-882-9585.
We appreciate your cooperation in this research initiative. Your participation is important for the success of
this research and for the Missouri Lottery to improve the likelihood of success of future change efforts.
Sincerely yours,
Humberto Alvarez
Ph. D. Student
Department of Industrial and Manufacturing
Systems Engineering
College of Engineering
E3437 Engineering Building East
University of Missouri-Columbia
Columbia, MO 65211
Telephone: (573)-882-2691
Email: [email protected]
José L. Zayas-Castro
Professor and Director of Graduate Studies
Department of Industrial and Manufacturing
Systems Engineering
College of Engineering
E3437 Engineering Building East
University of Missouri-Columbia
Columbia, MO 65211
Telephone: (573)-882-9567
Email: [email protected]
University of Missouri-Columbia
College of Engineering
Department of Industrial and Manufacturing Systems Engineering
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
APPENDIX II
INTERVIEW PROTOCOL
398
Good (morning, afternoon) my name is Humberto Alvarez and I will like to ask you some
questions about organizational change at the Missouri Lottery. The objective of this
interview is to confirm the compiled final results of the questionnaire that was distributed
in January. In addition, this interview will help to fill some gaps that have been found
after the final compilation.
As mentioned in the email, this interview should not take more than 30 minutes of your
valuable time, and again, if you feel that the questions that I will ask to violate in any way
your confidence, you need not answer it. Further, you may withdraw from the study at
any time. All the information provided here is confidential and only group results will be
used to verify the previous results.
First I would like to ask some questions about you:
How long have you been working at MoLo?
How long have you been in your current position?
In which division do you work?
Can you briefly describe your current responsibilities?
Can you tell me your perceptions about the current performance of MoLo?
In terms of efficiency and effectiveness of the mission of MoLo
In terms of your expectations of what the lottery currently does and attains.
399
1. Do you think MoLo needs to change? Why?
No – Why?
Yes – Why?
What type of change is needed? (please give some examples)
Something that makes your daily work easier?
Something that will modify your activities and responsibilities?
Something that will change your area, department or division?
Something that will change the way the Lottery conducts business?
Other?
400
2. How do you know that change is necessary?
I will mention some elements or factors that might motivate change at MoLo. Which of
them you think are the main motivators of change right now:
a. Environment (new markets, opportunities, players, retailers)
b. Government
c. Management’s perception
d. Competition
Do you think these motivators have change in the last year?
Which ones do you think must be the main motivators? Why?
401
3. Here is a list of some of the most important projects that have been executed or
attempted in the last 8 years at MoLo. Please briefly comment about the objectives,
success, radicalness and significance at MoLo.
4C’s Billing
Success Radicalness Significance
Perceived Desired
4C’s Courier
4C’s Cross Redemption
4C’s Cashing
Strategic Planning
Lucky Town Campaign
Retail and Operations (ReOp)
Customer Care Unit
Promotions and Events
Procurement
Prize structure
4C’s Revisited (Info-Technology)
4C’s Revisited (Distribution)
Other__________________________
Please indicate for each one:
- Its degree of success:
Total failure, some success, total success, etc.[or how would you classify the degree of success
[extraordinary, high, average, fair, no success]
- Radicalness:
Something completely new in the lottery business (totally radical)
Something completely new to MoLo but already existing somewhere else
Something that modifies somewhat what your department actually do
A change in your daily activities and routines
- Significance to the business, your tasks and the lottery High, Low, Some [use a similar scale]
402
4. Following are a series of questions regarding the process of organizational change at
MoLo. Please answer each to best of your recollections.
Which do you think are the main obstacles to determine if there is a need of change?
What are the main obstacles to develop a change initiative?
What are the main obstacles when implementing a change initiative?
How do you perceive the willingness for change from the people at MoLo? Your coworkers?
Is there any way to determine this willingness?
a. If so, how do you measure it?
Is there any measure to determine whether a change attempt has been successful?
b. If so, which are they? How do you use them?
Do you think that to increase the opportunity of success of new change or innovation
initiatives it is necessary to generate a more profound change in the culture, perceptions or
expectations of all of you as members of this organization?
Anything else you would like to add as part of this interview?
Thanks again for your participations and for making possible the success of this project.
403